We study the potential of data-driven deep learning methods for separation of two communication signals from an observation of their mixture. In particular, we assume knowledge on the generation process of one of the signals, dubbed signal of interest (SOI), and no knowledge on the generation process of the second signal, referred to as interference. This form of the single-channel source separation problem is also referred to as interference rejection. We show that capturing high-resolution temporal structures (nonstationarities), which enables accurate synchronization to both the SOI and the interference, leads to substantial performance gains. With this key insight, we propose a domain-informed neural network (NN) design that is able to improve upon both "off-the-shelf" NNs and classical detection and interference rejection methods, as demonstrated in our simulations. Our findings highlight the key role communication-specific domain knowledge plays in the development of data-driven approaches that hold the promise of unprecedented gains.
翻译:我们研究数据驱动的深层学习方法将两种通信信号从对两种信号的混合观测中分离出来的潜力。特别是,我们假定对产生一种信号的过程有了解,即所谓的“兴趣信号”(SOI),对第二个信号的生成过程没有了解,称之为“干扰”。这种单一渠道源分离问题也被称为“拒绝干扰”。我们表明,捕捉高分辨率的时间结构(不静止)能够准确同步SOI和干扰,从而带来巨大的性能收益。我们通过这一关键洞察,提出了能够改进“现成”NNW和经典检测和干扰拒绝方法的域网设计,正如我们在模拟中所表明的那样。我们的调查结果突出了通信特定领域知识在开发数据驱动方法方面的关键作用,这种方法有望带来前所未有的收益。