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Logarithmic Non-uniform Quantization for List Decoding of Polar Codes

机译:对数的非均匀量化,用于极性代码的列表解码

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The quantization of intermediate log-likelihood ratios (LLRs) is a concern in the hardware implementation of the LLR-based tree search algorithms such as successive cancellation list (SCL) and sequential (SCS) decoding for polar codes (particularly for large block-lengths), where comparability of tree paths requires precision for path metrics that the uniform quantization demands a large memory space due to the wide dynamic range. As the consequence of low accuracy in uniform quantization (with large step size) for small LLR values, the error correction performance degrades. In this work, we present a logarithmic non-uniform quantization (based on lookup table, logarithm functions, and piecewise linear functions) which can provide an error correction performance close to floating-point precision for a wide range of code-lengths.
机译:中间日志似然比(LLRS)的量化是基于LLR的树搜索算法的硬件实现的关注,例如连续取消列表(SCL)和用于极性代码的顺序(SCS)解码(特别是对于大型块长度),树路径的可比性需要精确度用于路径度量,即均匀量化由于宽动态范围而要求大的内存空间。由于均匀量化的低精度(具有大的步长)对于小型LLR值,因此纠错性能降低。在这项工作中,我们介绍了对数非均匀量化(基于查找表,对数函数和分段线性函数),其可以提供接近浮点精度的纠错性能,用于各种代码长度。

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