A new deep-neural-network (DNN) based error correction encoder architecture for channels with feedback, called Deep Extended Feedback (DEF), is presented in this paper. The encoder in the DEF architecture transmits an information message followed by a sequence of parity symbols which are generated based on the message as well as the observations of the past forward channel outputs sent to the transmitter through a feedback channel. DEF codes generalize Deepcode [1] in several ways: parity symbols are generated based on forward-channel output observations over longer time intervals in order to provide better error correction capability; and high-order modulation formats are deployed in the encoder so as to achieve increased spectral efficiency. Performance evaluations show that DEF codes have better performance compared to other DNN-based codes for channels with feedback.
翻译:本文件介绍了一个新的基于深神经网络(DNN)的有反馈的频道错误校正编码新结构,称为深扩展反馈(DEF),Def结构的编码器传递一条信息信息,然后根据电文和通过反馈频道发送给发件人的过去前方频道输出的观测结果,产生一系列对等符号。Def代码以几种方式概括Deepcode [1]:基于前方频道输出观测,在较长的间隔内生成对等符号,以便提供更好的错误校正能力;在编码器中安装高顺序调制格式,以提高光谱效率。绩效评估显示,DEF代码比其他有反馈的频道基于DNN的代码有更好的性能。