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After training for the YCB object mustard, I have obtained results that are not very accurate. After checking the paper, I realized that you were combining two datasets: realistic and randomized.
I have now downloaded the FAT dataset.
Do you recommend training the mustard object of YCB by combining synthetic data from BlenderProc with:
Single images containing only the target object?
A mix of single and mixed images of all objects (so the model also learns not to detect anything)?
Thanks,
Joan
The text was updated successfully, but these errors were encountered:
They have used two approaches for data generation (Blender proc and Nvisii), Nvisii needs linux, nividia drivers and gpus to use it.
I have read a tip, you can try to generate image with 5 times of your object and 10 distractors from google_scanned_models
After training for the YCB object mustard, I have obtained results that are not very accurate. After checking the paper, I realized that you were combining two datasets: realistic and randomized.
I have now downloaded the FAT dataset.
Do you recommend training the mustard object of YCB by combining synthetic data from BlenderProc with:
Thanks,
Joan
The text was updated successfully, but these errors were encountered: