The sensitivity of joint source-channel coding based on double protograph LDPC codes to source statistics

Lin Wang, Huihui Wu, Shaohua Hong
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引用次数: 5

Abstract

Although the joint source and channel coding (JSCC) systems constructed from double protograph low-density parity-check (DP LDPC) codes has been demonstrated to possess good performance, especially when they are applied into the transmission of radiography images, where the frameworks of both transmitter and receiver still need to be further optimised for the sake of achieving bit error rate (BER) performance under 10-6 over wireless transmission environment. This paper focuses on the perspective of transmitting terminal to investigate what factors will affect the performance of DP LDPC schemes so that the new transmitting models can be further designed. Specifically, this paper mainly concentrates on the sensitivity of DP LDPC scheme to source statistics. The simulation results show that the entropy of source information is a dominate factor for sources with low entropy while the correlated side information plays a vital role in sources with large entropy, which provides explicit directions for further JSCC coding structures optimisation.
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基于双原生LDPC码的信源信道联合编码对信源统计量的敏感性
虽然由双原形低密度奇偶校验码(DP LDPC)构成的联合源信道编码(JSCC)系统已经被证明具有良好的性能,特别是当它们应用于放射成像图像的传输时,但为了在10-6以上的无线传输环境下实现误码率(BER)性能,发射机和接收机的框架仍需要进一步优化。本文从发射终端的角度出发,研究影响DP LDPC方案性能的因素,为进一步设计新的发射模式提供依据。具体而言,本文主要研究了DP LDPC方案对源统计量的敏感性。仿真结果表明,在低熵源中,源信息的熵是主要因素,而在大熵源中,相关侧信息起着至关重要的作用,这为进一步优化JSCC编码结构提供了明确的方向。
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