Elastica Models for Color Image Regularization
Hao Liu, Xue-Cheng Tai, Ron Kimmel, Roland Glowinski

TL;DR
This paper introduces new color image regularization models based on elastica, extending Euler's elastica to color images, and proposes operator-splitting methods for efficient minimization, validated through experiments.
Contribution
The paper proposes two novel color elastica models extending Euler's elastica, with operator-splitting algorithms for efficient minimization, improving regularization of color images.
Findings
New models outperform traditional methods in preserving image features.
Operator-splitting methods enable efficient minimization of complex models.
Experimental results validate the advantages of elastica-based regularization.
Abstract
One classical approach to regularize color is to tream them as two dimensional surfaces embedded in a five dimensional spatial-chromatic space. In this case, a natural regularization term arises as the image surface area. Choosing the chromatic coordinates as dominating over the spatial ones, the image spatial coordinates could be thought of as a paramterization of the image surface manifold in a three dimensional color space. Minimizing the area of the image manifold leads to the Beltrami flow or mean curvature flow of the image surface in the 3D color space, while minimizing the elastica of the image surface yields an additional interesting regularization. Recently, the authors proposed a color elastica model, which minimizes both the surface area and elastica of the image manifold. In this paper, we propose to modify the color elastica and introduce two new models for color image…
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Taxonomy
TopicsImage and Signal Denoising Methods · Medical Image Segmentation Techniques · Sparse and Compressive Sensing Techniques
