Literature DB >> 28504949

Cascaded Subpatch Networks for Effective CNNs.

Xiaoheng Jiang, Yanwei Pang, Manli Sun, Xuelong Li.   

Abstract

Conventional convolutional neural networks use either a linear or a nonlinear filter to extract features from an image patch (region) of spatial size (typically, is small and is equal to , e.g., is 5 or 7). Generally, the size of the filter is equal to the size of the input patch. We argue that the representational ability of equal-size strategy is not strong enough. To overcome the drawback, we propose to use subpatch filter whose spatial size is smaller than . The proposed subpatch filter consists of two subsequent filters. The first one is a linear filter of spatial size and is aimed at extracting features from spatial domain. The second one is of spatial size and is used for strengthening the connection between different input feature channels and for reducing the number of parameters. The subpatch filter convolves with the input patch and the resulting network is called a subpatch network. Taking the output of one subpatch network as input, we further repeat constructing subpatch networks until the output contains only one neuron in spatial domain. These subpatch networks form a new network called the cascaded subpatch network (CSNet). The feature layer generated by CSNet is called the csconv layer. For the whole input image, we construct a deep neural network by stacking a sequence of csconv layers. Experimental results on five benchmark data sets demonstrate the effectiveness and compactness of the proposed CSNet. For example, our CSNet reaches a test error of 5.68% on the CIFAR10 data set without model averaging. To the best of our knowledge, this is the best result ever obtained on the CIFAR10 data set.

Year:  2017        PMID: 28504949     DOI: 10.1109/TNNLS.2017.2689098

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw Learn Syst        ISSN: 2162-237X            Impact factor:   10.451


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2.  Linear leaky-integrate-and-fire neuron model based spiking neural networks and its mapping relationship to deep neural networks.

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