循环二进制卷积网络:利用循环反向传播增强1位DCNNs的性能

Chunlei Liu, Wenrui Ding, Xin Xia, Baochang Zhang, Jiaxin Gu, Jianzhuang Liu, Rongrong Ji, D. Doermann
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引用次数: 64

摘要

近年来,快速下降的计算和内存成本推动了深度学习领域许多应用的成功。然而,深度学习在资源有限的硬件(如嵌入式设备和智能手机)中的实际应用仍然具有挑战性。对于二值卷积网络,其原因在于二值化全精度滤波器导致的表示退化。为了解决这个问题,我们提出了新的循环滤波器(CiFs)和循环二进制卷积(CBConv),通过循环反向传播(CBP)来增强二值化卷积特征的容量。它们可以很容易地整合到现有的深度卷积神经网络(DCNNs)中,从而形成新的循环二进制卷积网络(CBCNs)。大量的实验证实,通过增加滤波器分集,可以最小化1位和全精度DCNNs之间的性能差距,从而进一步提高网络的表示能力。我们在ImageNet上的实验表明,使用ResNet18的CBCNs达到了61.4%的top-1准确率。与XNOR等最先进的算法相比,CBCNs的top-1精度可以提高10%,并且具有更强大的表示能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Circulant Binary Convolutional Networks: Enhancing the Performance of 1-Bit DCNNs With Circulant Back Propagation
The rapidly decreasing computation and memory cost has recently driven the success of many applications in the field of deep learning. Practical applications of deep learning in resource-limited hardware, such as embedded devices and smart phones, however, remain challenging. For binary convolutional networks, the reason lies in the degraded representation caused by binarizing full-precision filters. To address this problem, we propose new circulant filters (CiFs) and a circulant binary convolution (CBConv) to enhance the capacity of binarized convolutional features via our circulant back propagation (CBP). The CiFs can be easily incorporated into existing deep convolutional neural networks (DCNNs), which leads to new Circulant Binary Convolutional Networks (CBCNs). Extensive experiments confirm that the performance gap between the 1-bit and full-precision DCNNs is minimized by increasing the filter diversity, which further increases the representational ability in our networks. Our experiments on ImageNet show that CBCNs achieve 61.4% top-1 accuracy with ResNet18. Compared to the state-of-the-art such as XNOR, CBCNs can achieve up to 10% higher top-1 accuracy with more powerful representational ability.
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