论文标题

一位压缩感:我们可以深深地盲目吗?

One-Bit Compressive Sensing: Can We Go Deep and Blind?

论文作者

Zeng, Yiming, Khobahi, Shahin, Soltanalian, Mojtaba

论文摘要

一位压缩感知与从其一位噪声测量值中准确恢复了潜在的稀疏信号。该问题的常规信号恢复方法主要是基于以下假设,即可以使用感应矩阵的确切知识。但是,在这项工作中,我们提出了一种新颖的数据驱动和基于模型的方法,可以实现盲目恢复。即,信号恢复而无需了解传感矩阵。为此,我们利用了深厚的发展技术,并开发了用于该特定任务的模型驱动的深神经架构。所提出的深层体系结构能够通过利用基础展开的算法来学习替代的感应矩阵,从而使所得的学习的恢复算法可以准确,快速(就迭代次数而言)从其一位噪声测量中恢复了基本的兴趣信号。此外,由于将域知识和系统的数学模型纳入了拟议的深度体系结构,因此,与通常使用的黑盒深神经网络网络替代问题相比,相比之下,其可解释性的网络受益于增强的可解释性,并且需要少量的训练样本。

One-bit compressive sensing is concerned with the accurate recovery of an underlying sparse signal of interest from its one-bit noisy measurements. The conventional signal recovery approaches for this problem are mainly developed based on the assumption that an exact knowledge of the sensing matrix is available. In this work, however, we present a novel data-driven and model-based methodology that achieves blind recovery; i.e., signal recovery without requiring the knowledge of the sensing matrix. To this end, we make use of the deep unfolding technique and develop a model-driven deep neural architecture which is designed for this specific task. The proposed deep architecture is able to learn an alternative sensing matrix by taking advantage of the underlying unfolded algorithm such that the resulting learned recovery algorithm can accurately and quickly (in terms of the number of iterations) recover the underlying compressed signal of interest from its one-bit noisy measurements. In addition, due to the incorporation of the domain knowledge and the mathematical model of the system into the proposed deep architecture, the resulting network benefits from enhanced interpretability, has a very small number of trainable parameters, and requires very small number of training samples, as compared to the commonly used black-box deep neural network alternatives for the problem at hand.

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