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arxiv: 1902.09808 · v1 · pith:7MB4WOMZnew · submitted 2019-02-26 · 💻 cs.IT · math.IT

Statistical Learning Aided Decoding of BMST of Tail-Biting Convolutional Code

classification 💻 cs.IT math.IT
keywords algorithmdecodingbmstbmst-tbcccandidatecheckcodecodeword
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This paper is concerned with block Markov superposition transmission (BMST) of tail-biting convolutional code (TBCC). We propose a new decoding algorithm for BMST-TBCC, which integrates a serial list Viterbi algorithm (SLVA) with a soft check instead of conventional cyclic redundancy check (CRC). The basic idea is that, compared with an erroneous candidate codeword, the correct candidate codeword for the first sub-frame has less influence on the output of Viterbi algorithm for the second sub-frame. The threshold is then determined by statistical learning based on the introduced empirical divergence function. The numerical results illustrate that, under the constraint of equivalent decoding delay, the BMST-TBCC has comparable performance with the polar codes. As a result, BMST-TBCCs may find applications in the scenarios of the streaming ultra-reliable and low latency communication (URLLC) data services.

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