<?xml version="1.0" encoding="UTF-8" standalone="yes" ?>
<!DOCTYPE bugzilla SYSTEM "https://bugs.kde.org/page.cgi?id=bugzilla.dtd">

<bugzilla version="5.0.6"
          urlbase="https://bugs.kde.org/"
          
          maintainer="sysadmin@kde.org"
>

    <bug>
          <bug_id>435231</bug_id>
          
          <creation_ts>2021-04-01 19:58:04 +0000</creation_ts>
          <short_desc>Loading .FITS images for astrophotography</short_desc>
          <delta_ts>2021-04-06 14:52:11 +0000</delta_ts>
          <reporter_accessible>1</reporter_accessible>
          <cclist_accessible>1</cclist_accessible>
          <classification_id>2</classification_id>
          <classification>Applications</classification>
          <product>digikam</product>
          <component>Plugin-DImg-Magick</component>
          <version>7.3.0</version>
          <rep_platform>Microsoft Windows</rep_platform>
          <op_sys>Microsoft Windows</op_sys>
          <bug_status>RESOLVED</bug_status>
          <resolution>FIXED</resolution>
          
          
          <bug_file_loc></bug_file_loc>
          <status_whiteboard></status_whiteboard>
          <keywords></keywords>
          <priority>NOR</priority>
          <bug_severity>normal</bug_severity>
          <target_milestone>---</target_milestone>
          
          
          <everconfirmed>0</everconfirmed>
          <reporter name="Basil Rowe">basilrowe</reporter>
          <assigned_to name="Digikam Developers">digikam-bugs-null</assigned_to>
          <cc>caulier.gilles</cc>
    
    <cc>metzpinguin</cc>
          
          <cf_commitlink>https://invent.kde.org/graphics/digikam/commit/823417719a94db6e1c88710702a4c75a9ccabdbe</cf_commitlink>
          <cf_versionfixedin>7.3.0</cf_versionfixedin>
          <cf_sentryurl></cf_sentryurl>
          <votes>0</votes>

      

      

      

          <comment_sort_order>oldest_to_newest</comment_sort_order>  
          <long_desc isprivate="0" >
    <commentid>2021344</commentid>
    <comment_count>0</comment_count>
      <attachid>137247</attachid>
    <who name="Basil Rowe">basilrowe</who>
    <bug_when>2021-04-01 19:58:04 +0000</bug_when>
    <thetext>Created attachment 137247
screenshot of DigiKam thumbnail view showing .FITS previews

SUMMARY

Maybe I&apos;m missing some fundamental understanding of how DigiKam works, I am assuming because the ImageMagick plugin is loaded (Help -&gt; Component Information) it should be able to read/write .FITS files?

However, I can&apos;t get a preview image of a .FITS file, or open in editor. Both show checker board pattern, however the Colors tab shows histogram, which means(?) it sees something in the image file? I also had to add .FITS to Settings -&gt; Views -&gt; MIME types. (see attached screenshot)

I also installed ImageMagick-7.0.11-5-Q16-HDRI-x64-dll to see it it would help.

Windows: 10</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021562</commentid>
    <comment_count>1</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 04:49:33 +0000</bug_when>
    <thetext>Can you share some file samples somewhere in the cloud to try to reproduce the dysfunction ?

Gilles Caulier</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021567</commentid>
    <comment_count>2</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 05:26:17 +0000</bug_when>
    <thetext>I played with FITS on my Macbook pro using Chandra radio telescope samples :

https://i.imgur.com/yCFUpFh.png
https://i.imgur.com/Bn4kEWj.png
https://i.imgur.com/3gZXuVi.png

Image come from : https://www.chandra.harvard.edu/photo/openFITS/multiwavelength_data.html

Image magick version used to compile under MacOS is 6.9.11, but under Windows version 7.X must not be a problem.

I suspect a specificity with your FITS images not very well supported by Image Magick which render an alpha layer image. FITS is a very complex container with plenty of features.

We need samples from your collection to investigate.

Gilles Caulier</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021569</commentid>
    <comment_count>3</comment_count>
    <who name="Maik Qualmann">metzpinguin</who>
    <bug_when>2021-04-02 05:39:52 +0000</bug_when>
    <thetext>I suspect a change or bug in ImageMagick-7.x. Here under my native digiKam version I only see colored areas or pixel strips.

Maik</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021576</commentid>
    <comment_count>4</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 06:37:57 +0000</bug_when>
    <thetext>MAik, in the Chandra Fits collection, i found one item which render alpha layer thumbnail :

https://i.imgur.com/j3yCZo1.png

... but if i force to render thumbnails again and again, i can see that item is properly view, and sometime, not...

https://i.imgur.com/KQeRNpn.png

File is this one :

https://www.chandra.harvard.edu/photo/2014/ngc2207/fits/n2207_OPT_B.fits

Gilles</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021577</commentid>
    <comment_count>5</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 06:42:12 +0000</bug_when>
    <thetext>MAik,

This is the console output when i force to rebuild thumbnails with F5. At this time 2 item have been generated with alpha layer :

digikam.general: Using  8  CPU core to run threads
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Creating a thumbnails task for generating thumbnails
digikam.general: Action Thread run  8  new jobs
digikam.general: scan mode: ScheduleCollectionScan ::  (&quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/&quot;)
digikam.general: Event is dispatched to OSX desktop notifier
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.geoiface: ----
digikam.general: Using  8  CPU core to run threads
digikam.general: Action Thread run  1  new jobs
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits: The file contains data of an unknown image type&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Cancel Main Thread
digikam.general: One job is done
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/eso137_optical_R.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/flame_ir_B.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/herca_radio.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kepler_xray_he.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/kes73_optical.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.general: Cancel Main Thread
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m100_ir.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 750 750
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 8
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits: The file contains data of an unknown image type&quot;
digikam.dimg: IM blob size    : 2250000
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/b1509_ir_G.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ic1396a_xray.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m101_uv.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 3600 2742
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 8
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 2556
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 8
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 39484800
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 73612800
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 51840000
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM blob size    : 103680000
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM blob size    : 103680000
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n1929_optical.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM to DImg      : 2384 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 68659200
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n2207_OPT_B.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 3600 2874
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits: The file contains data of an unknown image type&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/n4736_ir.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc281_xray.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc602_optical_G.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/m51_optical_B.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6543_optical_B.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/ngc6240_optical_G.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 3600 1742
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 82771200
digikam.dimg: IM blob size    : 50169600
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM to DImg      : 2384 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 2719
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 68659200
digikam.dimg: IM to DImg      : 3600 2938
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM to DImg      : 3600 3000
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 78307200
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/rcw38_ir.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM to DImg      : 3600 3000
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 84614400
digikam.general: One job is done
digikam.metaengine: Cannot load metadata from file /System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits  (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits: The file contains data of an unknown image type&quot;
digikam.metaengine: Error: source file is not HEIF image.
digikam.general: Trying to get thumbnail with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail with DImg preview for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.rawengine: Failed to load embedded RAW preview
digikam.general: Trying to get thumbnail from half preview with libraw for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.general: Trying to get thumbnail from Embedded preview with Exiv2 for &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot;
digikam.metaengine: Cannot load metadata using Exiv2   (Error # 11 :  &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits: The file contains data of an unknown image type&quot;
digikam.dimg: &quot;/System/Volumes/Data/Users/gilles/Pictures/FITS/mrk573_radio.fits&quot; : &quot;IMAGEMAGICK&quot; file identified
digikam.dimg: Try to load image with ImageMagick codecs
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM blob size    : 103680000
digikam.dimg: IM blob size    : 86400000
digikam.dimg: IM blob size    : 86400000
digikam.general: One job is done
digikam.general: One job is done
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.general: One job is done
digikam.dimg: IM to DImg      : 3600 3600
digikam.dimg: IM QuantumRange : 65535
digikam.dimg: IM Depth        : 16
digikam.dimg: IM Format       : Flexible Image Transport System
digikam.dimg: IM blob size    : 103680000
digikam.general: One job is done
digikam.general: One job is done
digikam.general: One job is done
digikam.dimg: IM blob size    : 103680000
digikam.general: One job is done
digikam.general: List of Pending Jobs is empty
digikam.general: Event is dispatched to OSX desktop notifier
digikam.general: Cancel Main Thread
digikam.general: Cancel Main Thread

screenshot : https://i.imgur.com/FpCW5PG.png

Gilles</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021582</commentid>
    <comment_count>6</comment_count>
    <who name="Maik Qualmann">metzpinguin</who>
    <bug_when>2021-04-02 07:00:17 +0000</bug_when>
    <thetext>This image as an example: m51_optical_B.fits
It is displayed as a pink thumbnail for me, the preview is empty. With the &quot;display&quot; command from ImageMagick I get a correct image. Nothing noticeable in the debug log.

Maik</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021584</commentid>
    <comment_count>7</comment_count>
    <who name="Maik Qualmann">metzpinguin</who>
    <bug_when>2021-04-02 07:05:19 +0000</bug_when>
    <thetext>With the AppImage from digiKam-7.2.0 and the internal ImageMagick-6.9 I get a correct image of the example image.

Maik</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021595</commentid>
    <comment_count>8</comment_count>
    <who name="Maik Qualmann">metzpinguin</who>
    <bug_when>2021-04-02 08:30:22 +0000</bug_when>
    <thetext>Git commit 823417719a94db6e1c88710702a4c75a9ccabdbe by Maik Qualmann.
Committed on 02/04/2021 at 08:29.
Pushed by mqualmann into branch &apos;master&apos;.

fix convert ImageMagick to DImg buffer
FIXED-IN: 7.3.0

M  +2    -1    NEWS
M  +15   -8    core/dplugins/dimg/imagemagick/dimgimagemagickloader.cpp

https://invent.kde.org/graphics/digikam/commit/823417719a94db6e1c88710702a4c75a9ccabdbe</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021597</commentid>
    <comment_count>9</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 08:33:10 +0000</bug_when>
    <thetext>Maik, 

I found a way with ImageMagick to extract all recognized metadata from image. For FITS this give something like that:

[gilles@localhost FITS]$ identify  -format &apos;%[*:*]&apos;  ngc6543_optical_B.fits 
date:create=2021-04-02T08:19:47+00:00
date:modify=2021-04-02T08:19:10+00:00
fits:bitpix=16 / number of bits per data pixel                  
fits:bscale=1 / default scaling factor                         
fits:bzero=32768 / offset data range to that of unsigned short    
fits:cd1_1=4.44707382411E-06 / Degrees / Pixel                                
fits:cd1_2=-3.14322677056E-06 / Degrees / Pixel                                
fits:cd2_1=-3.14322677056E-06 / Degrees / Pixel                                
fits:cd2_2=-4.44707382411E-06 / Degrees / Pixel                                
fits:colorspc=&apos;Grayscale&apos;          / PCL: Color space                               
fits:comment=FITS module version 01.01.02.0288                                       
fits:crpix1=2043.50292969 / Reference Pixel in X                           
fits:crpix2=1902.92858887 / Reference Pixel in Y                           
fits:crval1=269.640136719 / R.A. (degrees) of reference pixel              
fits:crval2=66.6320571899 / Declination of reference pixel                 
fits:ctype1=&apos;RA---TAN&apos;           / Coordinate Type                                
fits:ctype2=&apos;DEC--TAN&apos;           / Coordinate Type                                
fits:equinox=2000. / Equinox of Ref. Coord.                         
fits:extend=T / FITS dataset may contain extensions            
fits:history=PUTAST: Aug  8 11:25:45 2008 World Coordinate System parameters written 
fits:latpole=0. / Celestial latitude of native pole              
fits:lonpole=180. / Native longitude of Celestial pole             
fits:naxis=2 / number of data axes                            
fits:naxis1=3600 / length of data axis 1                          
fits:naxis2=3600 / length of data axis 2                          
fits:program=&apos;PixInsight 01.08.03.1123&apos; / Software that created this HDU           
fits:pv2_1=0. / Projection parameter 1                         
fits:resolutn=300. / PCL: Resolution in pixels per resolution unit  
fits:resounit=&apos;inch    &apos;           / PCL: Resolution unit                           
fits:simple=T / file does conform to FITS standard             
[gilles@localhost FITS]$ 

I think we will need a new DMetadata wrapper based on ImageMagick as existing ones based on libheif and libraw...

In opposite of &apos;identify -verbose filename&apos; which take age to give output as histogram and color spaces are parsed, the &apos;identify  -format &apos;%[*:*]&apos; filename&apos; way is very fast...

Gilles</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021624</commentid>
    <comment_count>10</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 10:13:27 +0000</bug_when>
    <thetext>I reopen this file for non Exiv2 supported file and metadata extraction :

https://bugs.kde.org/show_bug.cgi?id=417431</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021717</commentid>
    <comment_count>11</comment_count>
    <who name="Basil Rowe">basilrowe</who>
    <bug_when>2021-04-02 18:00:12 +0000</bug_when>
    <thetext>First, I want to thank everyone for the Very quick action on this! Wow

I can somewhat follow the discussion, but I&apos;m not sure if the .FITS issue is fixed, although this Bug shows a Status of Resolved Fixed. I downloaded and installed the weekly snapshot, digiKam-7.3.0-20210401T190948-Win64.exe, but I&apos;m still getting the same results:

Thumb + Preview images show checkerboards while Colors tab show histograms. The Image Editor shows nothing (no checkerboard) however the cursor changes from an arrow to a plus sign + like is was moving from an empty area to the image.

I was asked to include some FITS images. The first 2 are raw (uncalibrated) 16bit images from my 2 CCD cameras. The second 2 (with _out in filename) are calibrated (dark + flat) and 32bit.

https://drive.google.com/file/d/1Hv_bljRdnfKVOetCvkdcyoMTNM0_znKp/view?usp=sharing

https://drive.google.com/file/d/1Hv_bljRdnfKVOetCvkdcyoMTNM0_znKp/view?usp=sharing

https://drive.google.com/file/d/1_C728tlK_9wEuOCHxYWFZA-jnuoNquvJ/view?usp=sharing

https://drive.google.com/file/d/1Cbfzim6ID9TOe-OPIKoySOsYzR7o0gVQ/view?usp=sharing

Thank to everyone again.

Basil
https://www.rmsobservatory.org/</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021722</commentid>
    <comment_count>12</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-02 18:05:50 +0000</bug_when>
    <thetext>The fix done by Miak in source code have been done... today.

The daily build is updated in the evening (Paris time), so you must wait tomorow morning (:-)))...

Best

Gilles Caulier</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021727</commentid>
    <comment_count>13</comment_count>
    <who name="Maik Qualmann">metzpinguin</who>
    <bug_when>2021-04-02 18:17:27 +0000</bug_when>
    <thetext>I have tested the 4 images with my Linux digiKam developer version and they are all displayed correctly.

Maik</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2021728</commentid>
    <comment_count>14</comment_count>
    <who name="Basil Rowe">basilrowe</who>
    <bug_when>2021-04-02 18:20:58 +0000</bug_when>
    <thetext>(In reply to caulier.gilles from comment #12)
&gt; The fix done by Miak in source code have been done... today.
&gt; 
&gt; The daily build is updated in the evening (Paris time), so you must wait
&gt; tomorow morning (:-)))...
&gt; 
&gt; Best
&gt; 
&gt; Gilles Caulier

Ha! another example of how coders make (almost) everything work in the world and always come first :)</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2022287</commentid>
    <comment_count>15</comment_count>
    <who name="Basil Rowe">basilrowe</who>
    <bug_when>2021-04-04 18:49:31 +0000</bug_when>
    <thetext>Just installed digiKam-7.3.0-20210404T081036-Win64.exe. After rebuilding the thumbnails (which took a while for about 23,000 images (1.5 years of chasing asteroids, trying to figure out rotation periods) the thumbs and images are all there!

Many, many thanks to all!

Basil</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2022863</commentid>
    <comment_count>16</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-06 14:25:27 +0000</bug_when>
    <thetext>Git commit 69df44c6fc5777252c6a9f00204344a070787e25 by Gilles Caulier.
Committed on 06/04/2021 at 14:09.
Pushed by cgilles into branch &apos;master&apos;.

Add metadata extraction support for non supported Exiv2 files.
A new ImageMagick wrapper using internally IM::identify C++ API will list all
ImageMagick properties and host all information to a dedicated Xmp.IMProperties XMP namespace.

Screenshot with FITS astro-photo images taken from NASA/CHANDRA radio-telescope: https://imgur.com/QRHsGOE
Related: bug 417431, bug 393408
FIXED-IN: 4.3.0

M  +3    -2    NEWS
M  +1    -0    core/libs/metadataengine/CMakeLists.txt
M  +7    -0    core/libs/metadataengine/dmetadata/dmetadata.h
M  +5    -2    core/libs/metadataengine/dmetadata/dmetadata_fileio.cpp
C  +75   -53   core/libs/metadataengine/dmetadata/dmetadata_imagemagick.cpp [from: core/tests/dimg/magickidentify.cpp - 060% similarity]
M  +0    -1    core/libs/metadataengine/engine/metaengine.h
M  +2    -2    core/tests/dimg/magickidentify.cpp
M  +1    -1    core/tests/dimg/magickloader.cpp

https://invent.kde.org/graphics/digikam/commit/69df44c6fc5777252c6a9f00204344a070787e25</thetext>
  </long_desc><long_desc isprivate="0" >
    <commentid>2022881</commentid>
    <comment_count>17</comment_count>
    <who name="">caulier.gilles</who>
    <bug_when>2021-04-06 14:52:11 +0000</bug_when>
    <thetext>Git commit 89fd16a675a68fd84f63299dea53fff3b5e08dee by Gilles Caulier.
Committed on 06/04/2021 at 14:53.
Pushed by cgilles into branch &apos;master&apos;.

Add FITS file format support in database and image editor
Related: bug 393408, bug 417431

M  +28   -2    core/app/utils/digikam_globals.cpp
M  +31   -17   core/libs/database/coredb/coredbschemaupdater.cpp
M  +2    -0    core/libs/database/coredb/coredbschemaupdater.h

https://invent.kde.org/graphics/digikam/commit/89fd16a675a68fd84f63299dea53fff3b5e08dee</thetext>
  </long_desc>
      
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            <date>2021-04-01 19:58:04 +0000</date>
            <delta_ts>2021-04-01 19:58:04 +0000</delta_ts>
            <desc>screenshot of DigiKam thumbnail view showing .FITS previews</desc>
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    </bug>

</bugzilla>