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Deep-Learning-Aided Successive-Cancellation Decoding of Polar Codes

机译:极地码的深度学习辅助连续取消解码

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A deep-learning-aided successive-cancellation list (DL-SCL) decoding algorithm for polar codes is introduced with deep-learning-aided successive-cancellation (DL-SC) decoding being a specific case of it. The DL-SCL decoder works by allowing additional rounds of SCL decoding when the first SCL decoding attempt fails, using a novel bit-flipping metric. The proposed bit-flipping metric exploits the inherent relations between the information bits in polar codes that are represented by a correlation matrix. The correlation matrix is then optimized using emerging deep-learning techniques. Performance results on a polar code of length 128 with 64 information bits concatenated with a 24-bit cyclic redundancy check show that the proposed bit-flipping metric in the proposed DL-SCL decoder requires up to 66% fewer multiplications and up to 36% fewer additions, without any need to perform transcendental functions, and by providing almost the same error-correction performance in comparison with the state of the art.
机译:介绍了一种用于极地码的深度学习辅助连续取消列表(DL-SCL)解码算法,其中以深度学习辅助连续取消列表(DL-SC)解码为例。 DL-SCL解码器通过使用新颖的位翻转度量,在第一次SCL解码尝试失败时允许进行更多轮SCL解码来工作。所提出的比特翻转度量利用由相关矩阵表示的极性码中的信息比特之间的固有关系。然后使用新兴的深度学习技术对相关矩阵进行优化。在长度为128的极性代码上将64个信息位与24位循环冗余码校验相结合的性能结果表明,所建议的DL-SCL解码器中所建议的位翻转度量所需的乘法运算最多减少66%,而所需的乘法运算最多减少36%无需执行先验功能,并且与现有技术相比提供几乎相同的纠错性能。

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