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Progressive Learning of Low-Precision Networks (1905.11781v1)

Published 28 May 2019 in cs.CV

Abstract: Recent years have witnessed the 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 it difficult to deploy in resource-limited platforms such as mobile devices. To this end, low-precision neural networks are widely studied which quantize weights or activations into the low-bit format. Though being efficient, low-precision networks are usually hard to train and encounter severe accuracy degradation. In this paper, we propose a new training strategy through expanding low-precision networks during training and removing the expanded parts for network inference. First, we equip each low-precision convolutional layer with an ancillary full-precision convolutional layer based on a low-precision network structure, which could guide the network to good local minima. Second, a decay method is introduced to reduce the output of the added full-precision convolution gradually, which keeps the resulted topology structure the same to the original low-precision one. Experiments on SVHN, CIFAR and ILSVRC-2012 datasets prove that the proposed method can bring faster convergence and higher accuracy for low-precision neural networks.

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Authors (6)
  1. Zhengguang Zhou (8 papers)
  2. Wengang Zhou (153 papers)
  3. Xutao Lv (5 papers)
  4. Xuan Huang (17 papers)
  5. Xiaoyu Wang (200 papers)
  6. Houqiang Li (236 papers)
Citations (11)