论文标题
颜色图像正则化的Elastica模型
Elastica Models for Color Image Regularization
论文作者
论文摘要
正规化颜色的一种经典方法是将它们作为二维表面嵌入五维的空间 - 色素空间中。在这种情况下,作为图像表面积出现了自然正规化项。选择色坐标为主导于空间的坐标,图像空间坐标可以被认为是在三维颜色空间中图像表面歧管的参数化。最小化图像歧管的面积会导致3D彩色空间中图像表面的Beltrami流或平均曲率流,同时最小化图像表面的弹性会产生额外的有趣正则化。最近,作者提出了一个颜色弹性模型,该模型可以最大程度地减少图像歧管的表面积和弹性。在本文中,我们建议修改颜色Elastica,并引入两个新模型,以供颜色图像正则化。修订的措施是由颜色Elastica模型,Euler的Elastica模型与灰度图像的总变异模型之间的关系激励的。与我们以前的颜色Elastica模型相比,新模型是Euler Elastica模型到彩色图像的直接扩展。所提出的模型是非线性的,并且具有挑战性以最大程度地减少。为了克服这一困难,建议了两种操作员分解方法。具体而言,非线性是通过引入新的向量和矩阵值变量来解耦的。然后,将最小化问题转换为解决最初的价值问题,这些问题被操作员拆分时间限制。每个子问题分裂后都具有闭合溶液,也可以有效地解决。综合实验证明了所提出模型的有效性和优势。与共同替代方案相比,将图像表面的弹性作为正则化项的效果得到了经验验证。
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 regularization. The revised measures are motivated by the relations between the color elastica model, Euler's elastica model and the total variation model for gray level images. Compared to our previous color elastica model, the new models are direct extensions of Euler's elastica model to color images. The proposed models are nonlinear and challenging to minimize. To overcome this difficulty, two operator-splitting methods are suggested. Specifically, nonlinearities are decoupled by introducing new vector- and matrix-valued variables. Then, the minimization problems are converted to solving initial value problems which are time-discretized by operator splitting. Each subproblem, after splitting either, has a closed-form solution or can be solved efficiently. The effectiveness and advantages of the proposed models are demonstrated by comprehensive experiments. The benefits of incorporating the elastica of the image surface as regularization terms compared to common alternatives are empirically validated.