The signal demixing problem seeks to separate a superposition of multiple signals into its constituent components. This paper studies a two-stage approach that first decompresses and subsequently deconvolves the noisy and undersampled observations of the superposition using two convex programs. Probabilistic error bounds are given on the accuracy with which this process approximates the individual signals. The theory of polar convolution of convex sets and gauge functions plays a central role in the analysis and solution process. If the measurements are random and the noise is bounded, this approach stably recovers low-complexity and mutually incoherent signals, with high probability and with near-optimal sample complexity. We develop an efficient algorithm, based on level-set and conditional-gradient methods, that solves the convex optimization problems with sublinear iteration complexity and linear space requirements. Numerical experiments on both real and synthetic data confirm the theory and the efficiency of the approach.
翻译:信号解密问题试图将多个信号的叠加分解到其组成部分中。 本文研究一种两阶段方法,先是用两个相形相形相形的程式解压缩,然后是用两个相形相形相形相色的对叠的噪音和低样观察结果分解。 给出概率错误的界限取决于这一过程接近单个信号的准确性。 二次相形形形色色和测量函数的极地相色相色化理论在分析和解析过程中发挥着核心作用。 如果测量结果随机,噪音被捆绑,那么这种方法会稳定地恢复低相形异和相互不协调的信号,而且概率高,而且具有近于最佳的样本复杂性。 我们开发了一种高效的算法,根据定级和有条件的分级法,用亚线性迭代复杂度和线性空间要求解决了对等相形优化的问题。 真实和合成数据的数值实验证实了该方法的理论和效率。