SENet
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SE is not working properly after 4th layer
Hello,
SE layer is working fine after 1st, 2nd and 3rd layers.
However, when I apply it after 4th layer my test accuracy is lower than usual(about 2%). My train percentage is getting started from lower value.
I could not find the reason.
If i could explain and if you understand the question, what do you think about this issue?
Do you have any explanation?
Thank you
Could you give more details about your problem, e.g. network architecture, task?
Thank you fast reply.
Model architecture : ResNext-101, HMDB51 dataset
I am using SE module for 3D CNN action recognition to detect human actions from videos https://github.com/craston/MARS (code which i am trying to implement)
As i mentioned SE is not working fine only after 4th layer, in all other cases it is working fine
In case of SE after 4th layer my result is lower.
Problem i got is below:
This val_epoch resulst are in normal case:
Val_Epoch: [1][1/47] Time 2.534 (2.534) Data 2.093 (2.093) Loss 3.7578 (3.7578) Acc 0.094 (0.094) Val_Epoch: [1][2/47] Time 0.457 (1.495) Data 0.000 (1.047) Loss 3.6949 (3.7263) Acc 0.125 (0.109) Val_Epoch: [1][3/47] Time 0.442 (1.144) Data 0.000 (0.698) Loss 3.7885 (3.7471) Acc 0.062 (0.094) Val_Epoch: [1][4/47] Time 0.442 (0.968) Data 0.000 (0.523) Loss 3.6572 (3.7246) Acc 0.250 (0.133) Val_Epoch: [1][5/47] Time 0.554 (0.886) Data 0.117 (0.442) Loss 3.7682 (3.7333) Acc 0.094
SE after 4th layer:
Val_Epoch: [1][1/47] Time 2.436 (2.436) Data 1.991 (1.991) Loss 3.8625 (3.8625) Acc 0.031 (0.031) Val_Epoch: [1][2/47] Time 0.444 (1.440) Data 0.000 (0.995) Loss 3.8611 (3.8618) Acc 0.062 (0.047) Val_Epoch: [1][3/47] Time 0.443 (1.108) Data 0.000 (0.664) Loss 3.8732 (3.8656) Acc 0.094 (0.062) Val_Epoch: [1][4/47] Time 0.454 (0.944) Data 0.000 (0.498) Loss 3.8900 (3.8717) Acc 0.094 (0.070) Val_Epoch: [1][5/47] Time 0.449 (0.845) Data 0.001 (0.398) Loss 3.8738 (3.8721) Acc 0.031 (0.062) Val_Epoch: [1][6/47] Time 0.460 (0.781) Data 0.000 (0.332) Loss 3.9112 (3.8786) Acc 0.031 (0.057)
As you can see in 2nd case val_epoch value is lower than 1st case.
However, in case of https://github.com/kenshohara/3D-ResNets-PyTorch (the same with 1st code) SE worked fine even after 4th layer, in spite of the ResNext-101 model is the same.
I could not find the reason from the code.
I am not understanding how this could possible.