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Fine-grained recognition of error correcting codes based on 1-D convolutional neural network

机译:基于1-D卷积神经网络的误差校正代码的细粒度识别

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摘要

Forward error correction (FEC) codes are the most commonly used method in channel coding, and it is capable of automatically detecting and correcting errors at the receiving end during transmission. At present, the channel coding semi-blind recognition given known FEC codes type has been extensively studied. However, in cognitive radio and non-cooperative systems, the types of channel coding are unknown at the receiving end. Therefore, the ability to identify the type of error correcting codes without any a priori knowledge is essential. In this paper, we proposed a novel method based on convolutional neural network that can achieve fine-grained type recognition for error correcting codes in non-cooperative systems. The proposed algorithm classifies the incoming data symbols among hamming codes, Bose-Chaudhuri-Hocquenghem (BCH) codes, Reed-Solomon (RS) codes, Low-density Parity-check (LDPC) codes, turbo codes, polar codes, and convolutional codes. Further, to train a well-behaved CNN model, we constructed a deep fusion model based on 1-D convolutional layer and modified 1-D inception architecture that can achieve end-to-end extraction of features. Experimental results show that the proposed model earns an average recognition accuracy of roughly 99% under the condition of signal-to-noise ratio (SNR) ranging from 6 dB to 20 dB. In addition, we conduct a comprehensively and thoroughly investigation on the performance of convolutional neural network based code recognition for digital communications. (C) 2020 Elsevier Inc. All rights reserved.
机译:前向纠错(FEC)代码是信道编码中最常用的方法,并且它能够在传输期间自动检测和校正接收端的错误。目前,已经广泛研究了已知的FEC代码类型的信道编码半盲识别。然而,在认知无线电和非协作系统中,信道编码类型在接收端未知。因此,在没有先验知识的情况下识别错误校正代码类型的能力至关重要。在本文中,我们提出了一种基于卷积神经网络的新方法,可以在非协作系统中实现误差校正代码的细粒度识别。所提出的算法对汉明代码,Bose-Chaudhuri-hocquenghem(BCH)代码,Reed-SoliCon(RS)代码,低密度奇偶校验(LDPC)代码,Turbo代码,极性代码和卷积码之间的传入数据符号进行分类。此外,为了培训良好的CNN模型,我们构建了基于1-D卷积层的深融合模型,并改进了1-D型架构,可以实现特征的端到端提取。实验结果表明,在从6 dB到20 dB的信噪比(SNR)的条件下,该模型的平均识别准确度大约为99%。此外,我们对基于卷积神经网络的数字通信刻录识别进行了全面和彻底的调查。 (c)2020 Elsevier Inc.保留所有权利。

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