Structured pruning via feature channels similarity and mutual learning for convolutional neural network compression

被引:0
|
作者
Wei Yang
Yancai Xiao
机构
[1] Electronic and Control Engineering Beijing Jiaotong University,School of Mechanical
[2] Beijing Jiaotong University,Key Laboratory of Vehicle Advanced Manufacturing, Measuring and Control Technology, Ministry of Education
来源
Applied Intelligence | 2022年 / 52卷
关键词
Convolutional neural network; Model compression; Feature channels similarity; Mutual learning;
D O I
暂无
中图分类号
学科分类号
摘要
The development of convolutional neural network (CNN) have been hindered in resource-constrained devices due to its large memory and calculation. To obtain a light-weight network, we propose feature channels similarity and mutual learning fine tuning (FCS-MLFT) method. To begin with, we focus on the similarity redundancy between the output feature channels of CNN, and propose a novel structured pruning criterion based on the Cosine Similarity, moreover, we use K-Means to cluster the convolution kernels corresponding to the L1 norm of the feature maps into several bins, and calculate the similarity values between feature channels in each bin. Then, different from the traditional method of using the same strategy as the training process to improve the accuracy of the compressed model, we apply mutual learning fine tuning (MLFT) to improve the accuracy of the compact model and the accuracy obtained by the proposed method can achieve the accuracy of the traditional fine tuning (TFT) while significantly shortening the number of epochs. The experimental results not only show the performance of FCS method outperform the existing criteria, such as kernel norm-based and the layer-wise feature norm-based methods, but also prove that MLFT strategy can reduce the number of epochs.
引用
收藏
页码:14560 / 14570
页数:10
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