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Windows photo gallery metadata tag names

  1. Windows photo gallery reportedly stores metadata like captions and tags in the metadata, so that you keep all your hard done organization when you move your pictures from one folder to another, one computer to another, one program to another, one OS to another...
  2. So where does Windows Photo Gallery store all that organizational data
  3. Using Phil Harvey's great ExifTool [queens U] I dumped jpg metadata and found that:
  4. Tags are stored in
    Subject
    Last Keyword XMP
  5. Captions are stored in
    Title
    XP Title

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