4.6 Article

A Color Elastica Model for Vector-Valued Image Regularization

Journal

SIAM JOURNAL ON IMAGING SCIENCES
Volume 14, Issue 2, Pages 717-748

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/20M1354532

Keywords

color image regularization; operator splitting; Polyakov action; Laplace-Beltrami; Euler's elastica

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This paper introduces an extension method for the Polyakov action for color images, which processes color images by minimizing the color manifold curvature. The proposed model decouples nonlinearity, converts the problem into solving for the steady state of the initial-value problem, and uses a time-splitting approach to obtain closed-form solutions, demonstrating the efficiency and robustness of the method through systematic numerical experiments.
Models related to the Euler's elastica energy have proven to be useful for many applications including image processing. Extending elastica models to color images and multichannel data is a challenging task, as stable and consistent numerical solvers for these geometric models often involve high order derivatives. Like the single channel Euler's elastica model and the total variation models, geometric measures that involve high order derivatives could help when considering image formation models that minimize elastic properties. In the past, the Polyakov action from high energy physics has been successfully applied to color image processing. Here, we introduce an addition to the Polyakov action for color images that minimizes the color manifold curvature. The color image curvature is computed by applying the Laplace-Beltrami operator to the color image channels. When reduced to gray-scale images, while selecting appropriate scaling between space and color, the proposed model minimizes Euler's elastica operating on the image level sets. Finding a minimizer for the proposed nonlinear geometric model is a challenge we address in this paper. Specifically, we present an operator-splitting method to minimize the proposed functional. The nonlinearity is decoupled by introducing three vector-valued and matrix-valued variables. The problem is then converted into solving for the steady state of an associated initial-value problem. The initial-value problem is time split into three fractional steps, such that each subproblem has a closed form solution, or can be solved by fast algorithms. The efficiency and robustness of the proposed method are demonstrated by systematic numerical experiments.

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