Multireference alignment using semidefinite programming

A. Bandeira, M. Charikar, A. Singer, Andy Zhu
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引用次数: 97

Abstract

The multireference alignment problem consists of estimating a signal from multiple noisy shifted observations. Inspired by existing Unique-Games approximation algorithms, we provide a semidefinite program (SDP) based relaxation which approximates the maximum likelihood estimator (MLE) for the multireference alignment problem. Although we show this MLE problem is Unique-Games hard to approximate within any constant, we observe that our poly-time approximation algorithm for this problem appears to perform quite well in typical instances, outperforming existing methods. In an attempt to explain this behavior we provide stability guarantees for our SDP under a random noise model on the observations. This case is more challenging to analyze than traditional semi-random instances of Unique-Games: the noise model is on vertices of a graph and translates into dependent noise on the edges. Interestingly, we show that if certain positivity constraints in the relaxation are dropped, its solution becomes equivalent to performing phase correlation, a popular method used for pairwise alignment in imaging applications. Finally, we describe how symmetry reduction techniques from matrix representation theory can greatly decrease the computational cost of the SDP considered.
使用半定规划的多参考对齐
多参考点对准问题包括从多个有噪声偏移的观测值中估计一个信号。在已有的Unique-Games近似算法的启发下,针对多参考对齐问题,提出了一种基于半定规划(SDP)的近似最大似然估计(MLE)的松弛算法。尽管我们发现这个MLE问题是Unique-Games难以在任何常数范围内进行近似,但我们观察到我们针对这个问题的多时间近似算法在典型情况下表现得相当好,优于现有方法。为了解释这种行为,我们在观测的随机噪声模型下为我们的SDP提供了稳定性保证。这种情况比传统的Unique-Games的半随机实例更具挑战性:噪声模型位于图的顶点上,并转化为边缘上的依赖噪声。有趣的是,我们表明,如果放弃松弛中的某些正性约束,其解就等同于执行相位相关,这是成像应用中用于成对对准的常用方法。最后,我们描述了如何从矩阵表示理论对称约简技术可以大大减少计算成本的SDP考虑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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