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Trust, But Verify: Fast and Accurate Signal Recovery From 1-Bit Compressive Measurements

机译:值得信赖,但可以验证:从1位压缩测量中快速准确地恢复信号

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摘要

The recently emerged compressive sensing (CS) framework aims to acquire signals at reduced sample rates compared to the classical Shannon-Nyquist rate. To date, the CS theory has assumed primarily real-valued measurements; it has recently been demonstrated that accurate and stable signal acquisition is still possible even when each measurement is quantized to just a single bit. This property enables the design of simplified CS acquisition hardware based around a simple sign comparator rather than a more complex analog-to-digital converter; moreover, it ensures robustness to gross nonlinearities applied to the measurements. In this paper we introduce a new algorithm—restricted-step shrinkage (RSS)—to recover sparse signals from 1-bit CS measurements. In contrast to previous algorithms for 1-bit CS, RSS has provable convergence guarantees, is about an order of magnitude faster, and achieves higher average recovery signal-to-noise ratio. RSS is similar in spirit to trust-region methods for nonconvex optimization on the unit sphere, which are relatively unexplored in signal processing and hence of independent interest.
机译:与经典的Shannon-Nyquist速率相比,最近出现的压缩感测(CS)框架旨在以降低的采样率采集信号。迄今为止,CS理论主要假设了实值测量。最近已经证明,即使每次测量量化为一个比特,仍然可以进行准确,稳定的信号采集。该特性可以基于简单的符号比较器而不是更复杂的模数转换器来设计简化的CS采集硬件。此外,它确保了对应用于测量的总非线性的鲁棒性。在本文中,我们介绍了一种新的算法-限步收缩(RSS)-从1位CS测量中恢复稀疏信号。与以前的用于1位CS的算法相比,RSS具有可证明的收敛保证,大约快了一个数量级,并且实现了更高的平均恢复信噪比。 RSS在本质上类似于用于单位球面上非凸优化的信任区域方法,在信号处理中相对未开发,因此具有独立的意义。

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