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Hi, thanks for sharing your results. What is the difference in experimental setup between the results in your first post and the results in your follow-up post?
Did you disable database sampling at training time? Otherwise the pasted samples may have inconsistent RGB features.
Wondering how to implement seg feature on this framework quickly.
I try to implement while in pipelines/preprocess.py file, however it's seen like i can't inference image in subprecessor.
How to modify it?
Thanks.
Here is a simple experiment on KITTI dataset.
By adding RGB features into points, the 3d AP increases, but the bev AP drops a lot.
Benchmark
with RGB feature
Based on Painted PointPillars result with segmentation feature instead of RGB feature
BEV on test set
I address this as an overfitting problem and will test it.
Does anybody observe a similar result?
How about using the Nucense dataset?
How about adding augmentation on RGB?
Hope for large 3d AP gain on Pedestrian and Cyclist.
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