One-Bit Compressed Sensing Using Generative Models

Geethu Joseph, Swatantra Kafle, P. Varshney
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引用次数: 3

Abstract

In this paper, we address the classical problem of one-bit compressed sensing. We present a deep learning based reconstruction algorithm that relies on a generative model. The generator which is a neural network, learns a mapping from a low dimensional space to a higher dimensional set comprising of sparse vectors. This pre-trained generator is used to reconstruct sparse vectors from their one-bit measurements by searching over the range of the generator. Hence, the algorithm presented in this paper provides excellent reconstruction accuracy by accounting for any other possible structure in the signal apart from sparsity. Further, we provide theoretical guarantees on the reconstruction accuracy of the presented algorithm. Using numerical results, we also demonstrate the efficacy of our algorithm compared to other existing algorithms.
使用生成模型的位压缩感知
在本文中,我们解决了一个经典的比特压缩感知问题。我们提出了一种基于深度学习的重建算法,该算法依赖于生成模型。生成器是一个神经网络,学习从低维空间到由稀疏向量组成的高维集合的映射。该预训练的生成器通过在生成器的范围内搜索稀疏向量的一比特测量值来重建稀疏向量。因此,本文提出的算法通过考虑信号中除稀疏性之外的任何其他可能的结构,提供了出色的重建精度。此外,我们还为该算法的重建精度提供了理论保证。通过数值结果,我们也证明了该算法与其他现有算法相比的有效性。
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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