Lan Ti-Yen, Bendory Tamir, Boumal Nicolas, Singer Amit
Program in Applied and Computational Mathematics and the Mathematics Department, Princeton University, Princeton, NJ 08544, USA.
IEEE Trans Signal Process. 2020;68:1589-1601. doi: 10.1109/tsp.2020.2975943. Epub 2020 Feb 24.
Motivated by the structure reconstruction problem in single-particle cryo-electron microscopy, we consider the multi-target detection model, where multiple copies of a target signal occur at unknown locations in a long measurement, further corrupted by additive Gaussian noise. At low noise levels, one can easily detect the signal occurrences and estimate the signal by averaging. However, in the presence of high noise, which is the focus of this paper, detection is impossible. Here, we propose two approaches-autocorrelation analysis and an approximate expectation maximization algorithm-to reconstruct the signal without the need to detect signal occurrences in the measurement. In particular, our methods apply to an arbitrary spacing distribution of signal occurrences. We demonstrate reconstructions with synthetic data and empirically show that the sample complexity of both methods scales as SNR in the low SNR regime.
受单粒子冷冻电子显微镜中的结构重建问题启发,我们考虑多目标检测模型,其中目标信号的多个副本出现在长测量中的未知位置,并进一步被加性高斯噪声破坏。在低噪声水平下,可以轻松检测信号出现情况并通过平均来估计信号。然而,在高噪声情况下(本文的重点),检测是不可能的。在这里,我们提出了两种方法——自相关分析和一种近似期望最大化算法——来重建信号,而无需检测测量中的信号出现情况。特别是,我们的方法适用于信号出现的任意间距分布。我们用合成数据展示了重建结果,并通过实验表明,在低信噪比(SNR) regime下,这两种方法的样本复杂度都与SNR成比例。