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首页> 外文期刊>IEEE transactions on circuits and systems. II, Express briefs >Chaos-Based Space-Time Trellis Codes With Deep Learning Decoding
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Chaos-Based Space-Time Trellis Codes With Deep Learning Decoding

机译:基于混乱的空间时间格子码,具有深度学习解码

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摘要

In this brief we propose a space-time trellis code scheme based on three-dimensional chaotic attractors. The chaotic trajectories are represented by the symbolic dynamics generated by a labeled Poincare section and are transmitted by multiple antennas, defining a chaos-based space-time trellis code (CB-STTC). This code is defined by a finite state encoder that maps information sequences to restricted sequences satisfying the dynamics of the attactor. We also propose a neural network architecture capable of learning how to decode the CB-STTC. Finally, the frame error rate of the proposed CB-STTC is analyzed with maximum likelihood and neural network decoding.
机译:在此简介中,我们提出了一种基于三维混沌吸引子的时空网格代码方案。混沌轨迹由由标记的庞卡部分生成的符号动态表示,并且由多个天线传输,定义基于混沌的时空格子代码(CB-STTC)。该代码由有限状态编码器定义,该有限状态编码器将信息序列映射到满足辅助器的动态的限制序列。我们还提出了一种能够学习如何解码CB-STTC的神经网络架构。最后,通过最大可能性和神经网络解码分析所提出的CB-STTC的帧误差率。

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