A Channel-Blind Decoding for LDPC Based on Deep Learning and Dictionary Learning

Xu Pang, Chao Yang, Zaichen Zhang, X. You, Chuan Zhang
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引用次数: 5

Abstract

Low-density parity-check (LDPC) codes are used to correct encoding errors that occur during transmission, which enjoys an excellent performance. The performance of existing Min-Sum decoders for LDPC codes relies heavily on accurate channel estimation. A two-dimensional blind channel decoding algorithm that does not require precise channel estimation is presented in this paper. The algorithm converts the original one-dimensional signal into a two-dimensional LDPC signal according to the template. Dictionary learning is introduced for pre-filtering, and deep learning is adopted for further denoising and decoding. It is revealed that the two-dimensional blind decoding algorithm has a significant improvement over the traditional belief propagation (BP) decoding algorithm when the channel noise is unknown. Moreover, the combination of dictionary learning and deep learning has a great improvement in performance and data size reduction.
基于深度学习和字典学习的LDPC信道盲解码
低密度校验码(LDPC)用于纠正传输过程中出现的编码错误,具有优异的性能。现有LDPC码最小和解码器的性能很大程度上依赖于准确的信道估计。提出了一种不需要精确信道估计的二维盲信道译码算法。该算法根据模板将原始一维信号转换成二维LDPC信号。采用字典学习进行预滤波,采用深度学习进行进一步去噪和解码。研究表明,在信道噪声未知的情况下,二维盲译码算法比传统的信念传播译码算法有显著的改进。此外,字典学习和深度学习的结合在性能和数据量减少方面都有很大的提高。
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