musco-pytorch
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How to restore the ideal accuracy(mAP) by fine-tuning
Hi author! Thx for ur sharing!
I was just trying your iterative compression algorithms using vbmf for compressing the faster rcnn model (exactly the same code mentioned in your paper), but i found it great difficulty doing the fine-tuning work. The more layers I compressed, the less mAP it achieved. Finally, it is approximately 8~10 points lost, which is far below your performance.
Can u tell me how I should do the fine-tuning part better? (like dataset, lr, epoch, etc.) Or can u tell me some of your opinions in terms of it? Thank u!
@juliagusak
- compress backbone predtrained on imagenet firstly after fine tune on imagenet , it's most computational part of every detector. I think it's more appropriate approach