Systematic evaluation of convolution neural network advances on the Imagenet.

Computer Vision and Image Understanding(2017)

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摘要
The paper systematically studies the impact of a range of recent advances in convolution neural network (CNN) architectures and learning methods on the object categorization (ILSVRC) problem. The evaluation tests the influence of the following choices of the architecture: non-linearity (ReLU, ELU, maxout, compatability with batch normalization), pooling variants (stochastic, max, average, mixed), network width, classifier design (convolutional, fully-connected, SPP), image pre-processing, and of learning parameters: learning rate, batch size, cleanliness of the data, etc.
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关键词
CNN,Benchmark,Non-linearity,Pooling,ImageNet
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