ScratchDet
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about some details
@KimSoybean HI 有几个疑问:
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在分析BN作用时,是基于SSD+VGG16.能不能这么认为,只要是一个包含了BN层的网络,将其作为detector的底层网络时,该detector都可以train from scratch?
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4.1节指出:remove the L2 Normalization.是不是因为BN层的存在可以代替这个L2 Normalization?
@foralliance Hi!I think we should speak English because your questions may help the people in other countries.
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No. When you train the model with large input image size (e.g., 800x1300), the batch-size will reduce to 1-2 due to the limited GPU memory. Then the effect of BN will be constrained. If so, please replace BN with GN. GN does not care batch-size.
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This question is very complex. I can just answer your question that they are not relevant.
@KimSoybean many many thanks!
Have you tried using Root-ResNet-18/34 on faster-rcnn?
@dby2017 Hello, I haven't tried Root-Res on faster r-cnn. Maybe it is not very effective due to the large input resolution (small objects will be larger than before).