Stable image reconstruction using total variation minimization
Computer Vision and Pattern Recognition
2015-03-20 v9 Information Theory
math.IT
Numerical Analysis
Abstract
This article presents near-optimal guarantees for accurate and robust image recovery from under-sampled noisy measurements using total variation minimization. In particular, we show that from O(slog(N)) nonadaptive linear measurements, an image can be reconstructed to within the best s-term approximation of its gradient up to a logarithmic factor, and this factor can be removed by taking slightly more measurements. Along the way, we prove a strengthened Sobolev inequality for functions lying in the null space of suitably incoherent matrices.
Cite
@article{arxiv.1202.6429,
title = {Stable image reconstruction using total variation minimization},
author = {Deanna Needell and Rachel Ward},
journal= {arXiv preprint arXiv:1202.6429},
year = {2015}
}
Comments
25 pages