Raviv Tomer, Schwartz Asaf, Be'ery Yair
School of Electrical Engineering, Tel-Aviv University, Tel-Aviv 6997801, Israel.
Entropy (Basel). 2021 Jan 10;23(1):93. doi: 10.3390/e23010093.
Tail-biting convolutional codes extend the classical zero-termination convolutional codes: Both encoding schemes force the equality of start and end states, but under the tail-biting each state is a valid termination. This paper proposes a machine learning approach to improve the state-of-the-art decoding of tail-biting codes, focusing on the widely employed short length regime as in the LTE standard. This standard also includes a CRC code. First, we parameterize the circular Viterbi algorithm, a baseline decoder that exploits the circular nature of the underlying trellis. An ensemble combines multiple such weighted decoders, and each decoder specializes in decoding words from a specific region of the channel words' distribution. A region corresponds to a subset of termination states; the ensemble covers the entire states space. A non-learnable gating satisfies two goals: it filters easily decoded words and mitigates the overhead of executing multiple weighted decoders. The CRC criterion is employed to choose only a subset of experts for decoding purpose. Our method achieves FER improvement of up to 0.75 dB over the CVA in the waterfall region for multiple code lengths, adding negligible computational complexity compared to the circular Viterbi algorithm in high signal-to-noise ratios (SNRs).
两种编码方案都强制起始状态和结束状态相等,但在咬尾编码中每个状态都是有效的终止状态。本文提出一种机器学习方法来改进咬尾码的现有解码技术,重点关注如长期演进(LTE)标准中广泛使用的短长度码。该标准还包括一个循环冗余校验(CRC)码。首先,我们对循环维特比算法进行参数化,它是一种利用基础网格循环特性的基线解码器。一个集成模型组合多个这样的加权解码器,每个解码器专门用于解码来自信道码字分布特定区域的码字。一个区域对应于终止状态的一个子集;该集成模型覆盖整个状态空间。一个不可学习的门控满足两个目标:它过滤容易解码的码字,并减轻执行多个加权解码器的开销。CRC准则用于仅选择一部分专家进行解码。在多码长的瀑布区域,我们的方法相对于循环维特比算法(CVA)实现了高达0.75 dB的误帧率(FER)改善,在高信噪比(SNR)下与循环维特比算法相比增加的计算复杂度可忽略不计。