Feb. 9, 2024, 5:46 a.m. | Deliang Wei Peng Chen Fang Li

cs.CV updates on arXiv.org arxiv.org

Deep denoisers have shown excellent performance in solving inverse problems in signal and image processing. In order to guarantee the convergence, the denoiser needs to satisfy some Lipschitz conditions like non-expansiveness. However, enforcing such constraints inevitably compromises recovery performance. This paper introduces a novel training strategy that enforces a weaker constraint on the deep denoiser called pseudo-contractiveness. By studying the spectrum of the Jacobian matrix, relationships between different denoiser assumptions are revealed. Effective algorithms based on gradient descent and Ishikawa …

constraints convergence cs.cv image image processing novel paper performance processing recovery signal strategy training

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