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CRC-Aided Belief Propagation List Decoding of Polar Codes

机译:极坐标码的CRC辅助信念传播列表解码

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Although iterative decoding of polar codes has recently made huge progress based on the idea of permuted factor graphs, it still suffers from a non-negligible performance degradation when compared to state-of-the-art CRC-aided successive cancellation list (CA-SCL) decoding. In this work, we show that iterative decoding of polar codes based on the belief propagation list (BPL) algorithm can approach the error-rate performance of CA-SCL decoding and, thus, can be efficiently used for decoding the standardized 5G polar codes. Rather than only utilizing the cyclic redundancy check (CRC) as a stopping condition (i.e., for error-detection), we also aim to benefit from the error-correction capabilities of the outer CRC code. For this, we develop two distinct soft-decision CRC decoding algorithms: a Bahl-Cocke-Jelinek-Raviv (BCJR)-based approach and a sum product algorithm (SPA)-based approach. Further, an optimized selection of permuted factor graphs is analyzed and shown to reduce the decoding complexity significantly. Finally, we benchmark the proposed CRC-aided belief propagation list (CA-BPL) decoding to state-of-the-art 5G polar codes under CA-SCL decoding and, thereby, showcase an error-rate performance not just close to the CA-SCL but also close to the maximum likelihood (ML) bound as estimated by ordered statistic decoding (OSD).
机译:尽管基于置换因子图的思想,极性码的迭代解码最近取得了长足的进步,但与最新的CRC辅助连续消除列表(CA-SCL)相比,它仍然遭受不可忽略的性能下降)解码。在这项工作中,我们表明基于置信传播列表(BPL)算法对极性代码进行迭代解码可以达到CA-SCL解码的误码率性能,因此可以有效地用于对标准5G极性代码进行解码。我们不仅希望将循环冗余码校验(CRC)作为停止条件(即用于错误检测),还旨在从外部CRC码的错误校正功能中受益。为此,我们开发了两种截然不同的软判决CRC解码算法:一种基于Bahl-Cocke-Jelinek-Raviv(BCJR)的方法和一种基于和积算法(SPA)的方法。此外,分析并示出了对置换因子图的优化选择,以显着降低解码复杂度。最后,我们将建议的CRC辅助置信传播列表(CA-BPL)解码基准化为CA-SCL解码下的最新5G极性代码,从而展示出不仅接近于CA的错误率性能-SCL,但也接近有序统计解码(OSD)所估计的最大似然(ML)范围。

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