Authors
Weihong Xu, Zhizhen Wu, Yeong-Luh Ueng, Xiaohu You, Chuan Zhang
Publication date
2017/10/3
Conference
2017 IEEE International workshop on signal processing systems (SiPS)
Pages
1-6
Publisher
IEEE
Description
Deep learning recently shows strong competitiveness to improve polar code decoding. However, suffering from prohibitive training and computation complexity, the conventional deep neural network (DNN) is only possible for very short code length. In this paper, the main problems of deep learning in decoding are well solved. We first present the multiple scaled belief propagation (BP) algorithm, aiming at obtaining faster convergence and better performance. Based on this, deep neural network decoder (NND) with low complexity and latency, is proposed for any code length. The training only requires a small set of zero codewords. Besides, its computation complexity is close to the original BP. Experiment results show that the proposed (64,32) NND with 5 iterations achieves even lower bit error rate (BER) than the 30-iteration conventional BP and (512, 256) NND also outperforms conventional BP decoder with …
Total citations
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Scholar articles
W Xu, Z Wu, YL Ueng, X You, C Zhang - 2017 IEEE International workshop on signal …, 2017