Provable algorithms for multi-reference alignment over $\SO(2)$
By: Gil Drozatz, Tamir Bendory, Nir Sharon
Potential Business Impact:
Fixes jumbled signals from spinning cameras.
The multi-reference alignment (MRA) problem involves reconstructing a signal from multiple noisy observations, each transformed by a random group element. In this paper, we focus on the group \(\mathrm{SO}(2)\) of in-plane rotations and propose two computationally efficient algorithms with theoretical guarantees for accurate signal recovery under a non-uniform distribution over the group. The first algorithm exploits the spectral properties of the second moment of the data, while the second utilizes the frequency marching principle. Both algorithms achieve the optimal estimation rate in high-noise regimes, marking a significant advancement in the development of computationally efficient and statistically optimal methods for estimation problems over groups.
Similar Papers
Functional Multi-Reference Alignment via Deconvolution
Information Theory
Fixes blurry pictures from many copies.
A Probabilistic Approach to Pose Synchronization for Multi-Reference Alignment with Applications to MIMO Wireless Communication Systems
Machine Learning (CS)
Fixes messy signals for better pictures and communication.
Sample Complexity Analysis of Multi-Target Detection via Markovian and Hard-Core Multi-Reference Alignment
Signal Processing
Find hidden signals in noisy data.