IVCVSep 12, 2021

A Complex Constrained Total Variation Image Denoising Algorithm with Application to Phase Retrieval

arXiv:2109.05496v110 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for image processing and phase retrieval applications.

The paper tackles the problem of denoising complex-valued images by extending total variation (TV) definitions to complex forms and developing an accelerated gradient projection algorithm, with application to phase retrieval showing validity in extracting sparsity priors and speeding up convergence.

This paper considers the constrained total variation (TV) denoising problem for complex-valued images. We extend the definition of TV seminorms for real-valued images to dealing with complex-valued ones. In particular, we introduce two types of complex TV in both isotropic and anisotropic forms. To solve the constrained denoising problem, we adopt a dual approach and derive an accelerated gradient projection algorithm. We further generalize the proposed denoising algorithm as a key building block of the proximal gradient scheme to solve a vast class of complex constrained optimization problems with TV regularizers. As an example, we apply the proposed algorithmic framework to phase retrieval. We combine the complex TV regularizer with the conventional projection-based method within the constraint complex TV model. Initial results from both simulated and optical experiments demonstrate the validity of the constrained TV model in extracting sparsity priors within complex-valued images, while also utilizing physically tractable constraints that help speed up convergence.

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