Small disclaimer this is from the txt log which is not exactly complete, there are few pixels missing here and there.

One second of the video is about 30 minutes of drawing (one frame contains 1 minute of drawing, 30 frames per second)

Also a little bit of bragging - couldn’t resist the challenge and got this all glued together in Python! Which is obviously a valid tool for this considering the rich data processing ecosystem.
Well maybe except the video generation part… definitely except the video generation - Pyav - bindings for ffmpeg, are really badly documented, luckily they have at least good enough examples.

The short story of how:

  • little bit of python script to convert the txt log into csv
  • from csv to pandas, there I made a few cleaning passes to get the “format” just right (mainly dealing with the mod_fill action)
  • pyav, ffmpeg and the world of video - oh boy:
    • for each one minute of drawing data
    • replay them over the canvas (numpy RGB array)
    • embed/copy the canvas into the video frame (another ndarray)
    • (add the timestamp above the canvas - cv2)
    • invoke pyav magic to mux/append it into the video
    • hope that your numpy array slices, splices, “broadcasts”, pyav codec options and stream configurations are correct. Otherwise, watch as you end up with 1GB+ of mp4 file - 3 hours to watch whole (1s/30fps) with really bad resolution or inverted/wrong colors:)

If anyone wants to tweak this or has ideas how to make this better just hit me up. Can also put the code somewhere if wanted.

What a wild ride ha!

    • taaz@biglemmowski.winOP
      link
      fedilink
      arrow-up
      3
      ·
      edit-2
      5 months ago

      The logs were provided by @grant here https://toast.ooo/post/4077161 but now that they released the (cleaner) database dump the post is edited with link to that instead.

      I am now integrating the databse dump into these timelapse scripts so will up the source some time after I get that done.