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

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