M to 1 Joint Source-Channel Coding of Gaussian Sources via Dichotomy of the Input Space Based on Deep Learning

Yashas Malur Saidutta, A. Abdi, F. Fekri
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引用次数: 7

Abstract

In this paper, we propose a deep neural network framework for Joint Source-Channel Coding of an m dimensional i.i.d. Gaussian source for transmission over a single additive white Gaussian noise channel with no delay. The framework employs two neural encoder-decoder pairs that learn to split the input signal space into two disjoint support sets. The encoder and the decoder are jointly trained to minimize the mean square error subject to a power constraint on the signal transmitted across the channel. The proposed method achieves results as good as the state of the art for m=3,4 and is easily extendable to higher dimensions. The trained model, we discovered, assigns almost equal probability to the disjoint support sets. The results show that the scheme performance is within 1.9dB of the Shannon optimal limit over a wide range of Channel Signal to Noise Ratios (CSNR) from 0dB to 30dB for various values of m. The method is also robust, i.e. employing a model trained at CSNR+/-5dB is only 0.6dB worse than a model trained specifically for that CSNR.
基于深度学习的输入空间二分类高斯源M to 1联合信道编码
在本文中,我们提出了一个深度神经网络框架,用于在单个加性高斯白噪声信道上无延迟传输的m维i.i.d高斯源的联合信源信道编码。该框架采用两个神经编码器-解码器对,学习将输入信号空间分割为两个不相交的支持集。对编码器和解码器进行联合训练,使受跨信道传输的信号的功率约束的均方误差最小化。所提出的方法在m=3,4的情况下获得了与现有技术一样好的结果,并且易于扩展到更高的维度。我们发现,训练后的模型给不相交的支持集分配了几乎相等的概率。结果表明,在各种m值的信道信噪比(CSNR)从0dB到30dB的宽范围内,该方案的性能在Shannon最优极限的1.9dB以内。该方法还具有鲁棒性,即采用CSNR+/-5dB训练的模型仅比专门针对该CSNR训练的模型差0.6dB。
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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