The need to recover high-dimensional signals from their noisy low-resolution quantized measurements is widely encountered in communications and sensing. In this paper, we focus on the extreme case of one-bit quantizers, and propose a deep detector entitled LoRD-Net for recovering information symbols from one-bit measurements. Our method is a model-aware data-driven architecture based on deep unfolding of first-order optimization iterations. LoRD-Net has a task-based architecture dedicated to recovering the underlying signal of interest from the one-bit noisy measurements without requiring prior knowledge of the channel matrix through which the one-bit measurements are obtained. The proposed deep detector has much fewer parameters compared to black-box deep networks due to the incorporation of domain-knowledge in the design of its architecture, allowing it to operate in a data-driven fashion while benefiting from the flexibility, versatility, and reliability of model-based optimization methods. LoRD-Net operates in a blind fashion, which requires addressing both the non-linear nature of the data-acquisition system as well as identifying a proper optimization objective for signal recovery. Accordingly, we propose a two-stage training method for LoRD-Net, in which the first stage is dedicated to identifying the proper form of the optimization process to unfold, while the latter trains the resulting model in an end-to-end manner. We numerically evaluate the proposed receiver architecture for one-bit signal recovery in wireless communications and demonstrate that the proposed hybrid methodology outperforms both data-driven and model-based state-of-the-art methods, while utilizing small datasets, on the order of merely $\sim 500$ samples, for training.
翻译:在通信和感测中,人们普遍需要从噪音低分辨率的500度量度测量中恢复高维信号。在本文中,我们注重一位四分仪的极端极端案例,并提议一个名为LORD-Net的深度探测器,以从一位测量中恢复信息符号。我们的方法是一个以一阶优化迭代方法深度演化为基础的模型认知数据驱动的架构。LORD-Net有一个基于任务的结构,专门从一位噪音测量中恢复基本关注信号,而无需事先了解一位测量的频道矩阵。拟议的深深探测器的参数比黑盒深网络要少得多,原因是将域知识纳入其结构的设计中,使得它能够以数据驱动的方式运作,同时利用基于模型优化的优化方法的深度、多功能和可靠性。LORD-Net-Net是一个以盲目的架构,它既要解决拟议的数据采集系统的非线性性质,又要确定信号恢复的第一个优化目标。因此,我们建议一个阶段的深度探测器比重培训方法,然后是进行一个阶段的模型,然后是再升级的模型,然后是再升级的模型,然后是再升级的模型,然后进行。