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Inferring sparse representations of continuous signals with continuous orthogonal matching pursuit

机译:用连续正交匹配追踪推断连续信号的稀疏表示

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摘要

Many signals, such as spike trains recorded in multi-channel electrophysiological recordings, may be represented as the sparse sum of translated and scaled copies of waveforms whose timing and amplitudes are of interest. From the aggregate signal, one may seek to estimate the identities, amplitudes, and translations of the waveforms that compose the signal. Here we present a fast method for recovering these identities, amplitudes, and translations. The method involves greedily selecting component waveforms and then refining estimates of their amplitudes and translations, moving iteratively between these steps in a process analogous to the well-known Orthogonal Matching Pursuit (OMP) algorithm []. Our approach for modeling translations borrows from Continuous Basis Pursuit (CBP) [], which we extend in several ways: by selecting a subspace that optimally captures translated copies of the waveforms, replacing the convex optimization problem with a greedy approach, and moving to the Fourier domain to more precisely estimate time shifts. We test the resulting method, which we call Continuous Orthogonal Matching Pursuit (COMP), on simulated and neural data, where it shows gains over CBP in both speed and accuracy.
机译:许多信号(例如记录在多通道电生理记录中的尖峰序列)可以表示为感兴趣的时间和幅度的波形的平移和缩放副本的稀疏总和。从聚集的信号中,人们可能试图估计组成该信号的波形的身份,幅度和转换。在这里,我们提出了一种用于恢复这些标识,幅度和平移的快速方法。该方法包括贪婪地选择分量波形,然后细化其幅度和平移的估计值,在这些步骤之间迭代地移动,其过程类似于众所周知的正交匹配追踪(OMP)算法[]。我们对翻译进行建模的方法借鉴了连续基础追求(CBP)[CBP] [CBP],它以几种方式扩展:通过选择最佳捕获波形翻译副本的子空间,用贪婪方法代替凸优化问题,然后转向傅立叶域可以更精确地估计时移。我们在模拟数据和神经数据上测试了所得方法(称为连续正交匹配追踪(COMP)),该方法在速度和准确性上均超过了CBP。

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