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Deep FisherNet for Object Classification

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arxiv 1608.00182 v1 pith:6TT7FBNV submitted 2016-07-31 cs.CV cs.LG

Deep FisherNet for Object Classification

classification cs.CV cs.LG
keywords classificationfishernetnetworkneuralobjectconvolutionalencodingend-to-end
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Despite the great success of convolutional neural networks (CNN) for the image classification task on datasets like Cifar and ImageNet, CNN's representation power is still somewhat limited in dealing with object images that have large variation in size and clutter, where Fisher Vector (FV) has shown to be an effective encoding strategy. FV encodes an image by aggregating local descriptors with a universal generative Gaussian Mixture Model (GMM). FV however has limited learning capability and its parameters are mostly fixed after constructing the codebook. To combine together the best of the two worlds, we propose in this paper a neural network structure with FV layer being part of an end-to-end trainable system that is differentiable; we name our network FisherNet that is learnable using backpropagation. Our proposed FisherNet combines convolutional neural network training and Fisher Vector encoding in a single end-to-end structure. We observe a clear advantage of FisherNet over plain CNN and standard FV in terms of both classification accuracy and computational efficiency on the challenging PASCAL VOC object classification task.

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