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Superset Technique for Approximate Recovery in One-Bit Compressed Sensing

机译:一位压缩感近似恢复的超集技术

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One-bit compressed sensing (1bCS) is a method of signal acquisition under extreme measurement quantization that gives important insights on the limits of signal compression and analog-to-digital conversion. The setting is also equivalent to the problem of learning a sparse hyperplane-classifier. In this paper, we propose a generic approach for signal recovery in nonadaptive 1bCS that leads to improved sample complexity for approximate recovery for a variety of signal models, including nonnegative signals and binary signals. We construct 1bCS matrices that are universal - i.e. work for all signals under a model - and at the same time recover very general random sparse signals with high probability. In our approach, we divide the set of samples (measurements) into two parts, and use the first part to recover the superset of the support of a sparse vector. The second set of measurements is then used to approximate the signal within the superset. While support recovery in 1bCS is well-studied, recovery of superset of the support requires fewer samples, which then leads to an overall reduction in sample complexity for approximate recovery.
机译:单位压缩检测(1BCS)是在极端测量量化下的信号采集方法,其对信号压缩和模数转换的限制提供了重要的见解。该设置也相当于学习稀疏超平面分类器的问题。在本文中,我们提出了一种通用方法,用于在非适度1BC中的信号恢复,导致改进的样本复杂性以获得各种信号模型的近似恢复,包括非负信号和二进制信号。我们构建一个通用的1BCS矩阵 - 即,适用于模型下的所有信号 - 并且同时恢复具有高概率的非常一般的随机稀疏信号。在我们的方法中,我们将样品集(测量)分成两部分,并使用第一部分来恢复稀疏载体的支持的超集。然后使用第二组测量来近似超集内的信号。虽然在1BCS中的支持恢复得到良好研究的同时,恢复支持的超级样品需要更少的样本,然后导致样本复杂性的总体降低以进行近似恢复。

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