Interpretable Analysis and Pruning of Modulation Recognition Network Based on Deep Learning

Fan Ni, Min Luo
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Abstract

Concerning poor interpretability and complexity of deep model in modulation recognition (MR) based on deep learning, an interpretable analysis and pruning framework of MR network based on Gradient-weighted Class Activation Mapping (Grad-CAM) is accordingly proposed in this paper. The framework first extracts the amplitude, phase and spectrum from the original modulated signal, and it uses the Smoothed Pseudo Wigner-Ville Distribution (SPWVD) to obtain the two-dimensional time-frequency spectrum of the modulated signal. Then, the key features in the deep model are visualized from the perspective of one-dimensional features and two-dimensional features at the input respectively. The framework visually displays and compares the differences and commonalities of the depth features of hidden layer with different models, extract the values of different filters of each layer in the deep neural network (DNN), and prune the network according to the values. The experiment results show that the interpretable and pruning framework of MR network based on Grad-CAM in this paper can achieve effective explanation and analysis on the MR network, and can greatly reduce the redundancy of the network. The running speed of the pruned network is 3.83 times higher than that of the original network. The size of the pruned network is 72% lower than that of the original network. Besides, the accuracy of the pruned network is 0.3% higher than that of the original network.
基于深度学习的调制识别网络可解释性分析与剪枝
针对基于深度学习的调制识别(MR)中深度模型可解释性差、复杂性大的问题,提出了一种基于梯度加权类激活映射(Grad-CAM)的MR网络可解释性分析与剪枝框架。该框架首先从原始调制信号中提取幅值、相位和频谱,然后利用平滑伪Wigner-Ville分布(SPWVD)得到调制信号的二维时频频谱。然后,分别从输入的一维特征和二维特征的角度对深度模型中的关键特征进行可视化。该框架可视化地显示和比较不同模型下隐藏层深度特征的差异和共性,提取深度神经网络(DNN)中每层不同过滤器的值,并根据这些值对网络进行修剪。实验结果表明,本文提出的基于Grad-CAM的核磁共振网络可解释和剪枝框架能够对核磁共振网络进行有效的解释和分析,并能大大降低网络的冗余度。修剪后的网络运行速度是原始网络运行速度的3.83倍。修剪后的网络比原来的网络小72%。此外,修剪后的网络比原始网络的准确率提高了0.3%。
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