Blind Identification of Channel Codes under AWGN and Fading Conditions via Deep Learning

Haifeng Peng, Chunjie Cao, Yang Sun, Haoran Li, Xiuhua Wen
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引用次数: 1

Abstract

Blind identification of channel codes is crucial in intelligent communication and non-cooperative signal processing, and it plays a significant role in wireless physical layer security, information interception, and information confrontation. Previous researches show a high computation complexity by manual feature extractions, in addition, problems of indisposed accuracy and poor robustness are to be resolved in a low signal-to-noise ratio (SNR). For solving these difficulties, based on deep residual shrinkage network (DRSN), this paper proposes a novel recognizer by deep learning technologies to blindly distinguish the type and the parameter of channel codes without any prior knowledge or channel state, furthermore, feature extractions by the neural network from codewords can avoid intricate calculations. We evaluated the performance of this recognizer in AWGN, single-path fading, and multi-path fading channels, the results of the experiments showed that the method we proposed worked well. It could achieve over 85 % of recognition accuracy for channel codes in AWGN channels when SNR is not lower than 4dB, and provide an improvement of more than 5% over the previous research in recognition accuracy, which proves the validation of the proposed method.
基于深度学习的AWGN和衰落条件下信道码盲识别
信道码盲识别是智能通信和非合作信号处理的关键,在无线物理层安全、信息截获、信息对抗等方面发挥着重要作用。以往的研究表明,人工特征提取的计算复杂度高,而且在低信噪比的情况下,需要解决精度不高、鲁棒性差的问题。针对这些困难,本文提出了一种基于深度残差收缩网络(deep residual shrinkage network, DRSN)的基于深度学习技术的识别器,在不需要任何先验知识和信道状态的情况下,对信道码的类型和参数进行盲目识别,并利用神经网络对码字进行特征提取,避免了复杂的计算。在AWGN信道、单径衰落信道和多径衰落信道中对该识别器的性能进行了测试,实验结果表明该方法效果良好。在信噪比不低于4dB的情况下,对AWGN信道中信道码的识别准确率达到85%以上,识别准确率比以往研究提高5%以上,证明了所提方法的有效性。
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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