Progressive Learning of Low-Precision Networks for Image Classification

IEEE Transactions on Multimedia(2021)

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摘要
Recent years have witnessed a great advance of deep learning in a variety of vision tasks. Many state-of-the-art deep neural networks suffer from large size and high complexity, which makes them difficult to deploy in resource-limited platforms such as mobile devices. To this end, low-precision neural networks are widely studied that quantize weights or activations into the low-bit format. Although efficient, low-precision networks are usually difficult to train and encounter severe accuracy degradation. In this paper, we propose a new training strategy based on progressive learning for image classification. First, we equip each low-precision convolutional layer with an ancillary full-precision convolutional layer based on a low-precision network structure. Second, a decay method is introduced to reduce the output of the added full-precision convolution gradually, which keeps the resulting topology structure the same as the original low-precision convolution. Extensive experiments on SVHN, CIFAR and ILSVRC-2012 datasets reveal that the proposed method can bring faster convergence and higher accuracy for low-precision neural networks.
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关键词
Low-precision networks,quantization,expanding,weakening,image classification
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