Comments (2)
Since caltech101 dataset has 101 object categories, you need to modify the softmax layer to 101 nodes.
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On 2016年9月4日, at 上午8:13, wangzhenhua2015 [email protected] wrote:
Help me figure it out, thanks.
Below is the steps I followed to conduct my experiment.
A: I split caltec101 to two disjoint dataset:
1, train.txt with 7357 images
2, val.txt with 1788 images
then I pack them into leveldb by run create_imagenet.sh.
B: I train the net followed the step when I train on cifar10. I did not modified the training and caffe net param and use 48 bits as defaultC: When I train the model, I noticed the log show as below. That was not I want like I finished training on cifar10 I got "Test net output #0: accuracy = 0.903437".
FYI
I0903 21:10:34.141065 29794 solver.cpp:317] Iteration 50000, loss = 15.486
I0903 21:10:34.141099 29794 solver.cpp:337] Iteration 50000, Testing net (#0)
I0903 21:10:41.981957 29794 solver.cpp:404] Test net output #0: accuracy = 0.0915625
I0903 21:10:41.982012 29794 solver.cpp:404] Test net output #1: loss: 50%-fire-rate = 0.00132921 (* 1 = 0.00132921 loss)
I0903 21:10:41.982022 29794 solver.cpp:404] Test net output #2: loss: classfication-error = 12.1441 (* 1 = 12.1441 loss)
I0903 21:10:41.982028 29794 solver.cpp:404] Test net output #3: loss: forcing-binary = -0.00390625 (* 1 = -0.00390625 loss)
I0903 21:10:41.982033 29794 solver.cpp:322] Optimization Done.
I0903 21:10:41.982038 29794 caffe.cpp:254] Optimization Done.—
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Solved. Thanks.
I got an accuracy of near 0.9 after I changed the softmax layer followed by your advice and conduct a new experiment.
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