Mix training data from different sources
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
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
Sorry that is not what I'm asking there @intelligencestreamlabs