Regularized Training Framework for Combining Pruning and Quantization to Compress Neural Networks

Qimin Ding, Ruonan Zhang, Yi Jiang, D. Zhai, Bin Li
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引用次数: 1

Abstract

Many convolutional neural networks(CNNs) have been proposed to solve computer vision tasks such as image classification and image segmentation. However the CNNs usually contain a large number of parameters to determine which consumes very high computation and power resources. Thus, it is difficult to deploy the CNNs on resource-limited devices. Network pruning and network quantization are two main methods to compress the CNNs, researchers often apply these methods individually without considering the relationship between them. In this paper, we explore the coupling relationship between network pruning and quantization, as well as the limits of the current network compression training method. Then we propose a new regularized training method that can combine pruning and quantization within a simple training framework. Experiments show that by using the proposed training framework, the finetune process is not needed anymore and hence we can reduce much time for training a network. The simulation results also show that the performance of the network can over-perform the traditional methods. The proposed framework is suitable for the CNNs deployed in portable devices with limited computational resources and power supply.
结合剪枝和量化压缩神经网络的正则化训练框架
许多卷积神经网络(cnn)被提出用于解决计算机视觉任务,如图像分类和图像分割。然而,cnn通常包含大量的参数,以确定哪些参数消耗非常高的计算和功耗资源。因此,很难在资源有限的设备上部署cnn。网络修剪和网络量化是cnn压缩的两种主要方法,研究人员经常单独使用这两种方法,而不考虑它们之间的关系。本文探讨了网络修剪与量化之间的耦合关系,以及当前网络压缩训练方法的局限性。然后,我们提出了一种新的正则化训练方法,该方法可以在一个简单的训练框架内将修剪和量化相结合。实验表明,该训练框架不需要再进行微调,从而大大减少了网络的训练时间。仿真结果也表明,该网络的性能优于传统方法。该框架适用于在计算资源和电源有限的便携式设备中部署cnn。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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