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custom dataset #26

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@ajtao

Hello,

I have 2 questions:

  1. In your instructions, you state: "You first have to run the complete tracking pipeline (without tracking, with a pre-trained CAMELTrack or with a SORT-based tracker, like oc-sort), on train, validation (and testing) sets for the dataset you want to train, and save the "Tracker States".
  • Can you make it clear, does this mean running with or without tracking? I'm not sure what you meant by "without tracking"?
  • When i ran the suggested command, such as "uv run tracklab -cn cameltrack dataset=dancetrack dataset.eval_set=train", this results in the tracking being run and then evaluation follows. But if tracking is disabled, then how could evaluation succeed? The code throws an error about "track_id" missing, which is because i turned tracking off :)
  • Can you also say a bit more about what this process is actually doing? I assume that this helps to create pose and reid information that is needed for CAMELTrack to be trained with? And is all that information saved within the tracker state?
  • Why does tracking have to be run if the ground truth tracks are already available?
  1. I have my own dataset where i already have detections/pose/reid features calculated. Do i still need to regenerate pose/reid using the CAMELTrack pipeline or can i somehow build the tracker state myself?

Thanks

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