12
21

Multi-reference alignment in high dimensions: sample complexity and phase transition

Abstract

Multi-reference alignment entails estimating a signal in RL\mathbb{R}^L from its circularly-shifted and noisy copies. This problem has been studied thoroughly in recent years, focusing on the finite-dimensional setting (fixed LL). Motivated by single-particle cryo-electron microscopy, we analyze the sample complexity of the problem in the high-dimensional regime LL\to\infty. Our analysis uncovers a phase transition phenomenon governed by the parameter α=L/(σ2logL)\alpha = L/(\sigma^2\log L), where σ2\sigma^2 is the variance of the noise. When α>2\alpha>2, the impact of the unknown circular shifts on the sample complexity is minor. Namely, the number of measurements required to achieve a desired accuracy ε\varepsilon approaches σ2/ε\sigma^2/\varepsilon for small ε\varepsilon; this is the sample complexity of estimating a signal in additive white Gaussian noise, which does not involve shifts. In sharp contrast, when α2\alpha\leq 2, the problem is significantly harder and the sample complexity grows substantially quicker with σ2\sigma^2.

View on arXiv
Comments on this paper