Maximum Likelihood Decoding for Channels with Uniform Noise and Signal Dependent Offset

R. Bu, J. Weber, Kees A. Schouhamer Immink
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引用次数: 1

Abstract

Maximum likelihood (ML) decision criteria have been developed for channels suffering from signal independent offset mismatch. Here, such criteria are considered for signal dependent offset, which means that the value of the offset may differ for distinct signal levels rather than being the same for all levels. An ML decision criterion is derived, assuming uniform distributions for both the noise and the offset. In particular, for the proposed ML decoder, bounds are determined on the standard deviations of the noise and the offset which lead to a word error rate equal to zero. Simulation results are presented confirming the findings.
具有均匀噪声和信号相关偏移的信道的最大似然解码
最大似然(ML)决策准则已开发的信道遭受信号独立偏移失配。在这里,这些标准被考虑为信号相关的偏移量,这意味着偏移量的值可能在不同的信号电平中不同,而不是在所有电平中相同。在假设噪声和偏移量均匀分布的情况下,导出了ML决策准则。特别是,对于所提出的ML解码器,边界是根据噪声的标准偏差和导致单词错误率等于零的偏移量确定的。仿真结果证实了上述结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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