A New Cross-Space Total Variation Regularization Model for Color Image Restoration With Quaternion Blur Operator

Zhigang Jia;Yuelian Xiang;Meixiang Zhao;Tingting Wu;Michael K. Ng
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Abstract

The cross-channel deblurring problem in color image processing is difficult to solve due to the complex coupling and structural blurring of color pixels. Until now, there are few efficient algorithms that can reduce color artifacts in deblurring process. To solve this challenging problem, we present a novel cross-space total variation (CSTV) regularization model for color image deblurring by introducing a quaternion blur operator and a cross-color space regularization functional. The existence and uniqueness of the solution are proved and a new L-curve method is proposed to find a balance of regularization terms on different color spaces. The Euler-Lagrange equation is derived to show that CSTV has taken into account the coupling of all color channels and the local smoothing within each color channel. A quaternion operator splitting method is firstly proposed to enhance the ability of color artifacts reduction of the CSTV regularization model. This strategy also applies to the well-known color deblurring models. Numerical experiments on color image databases illustrate the efficiency and effectiveness of the new model and algorithms. The color images restored by them successfully maintain the color and spatial information and are of higher quality in terms of PSNR, SSIM, MSE and CIEde2000 than the restorations of the-state-of-the-art methods.
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基于四元数模糊算子的彩色图像恢复跨空间全变分正则化模型
彩色图像处理中的跨通道去模糊问题由于彩色像素的复杂耦合和结构模糊而难以解决。到目前为止,在去模糊过程中,很少有有效的算法可以减少颜色伪影。为了解决这一具有挑战性的问题,我们提出了一种新的跨空间全变分(CSTV)正则化模型,该模型通过引入四元数模糊算子和跨颜色空间正则化函数来实现彩色图像去模糊。证明了解的存在唯一性,并提出了一种新的l曲线方法来寻找不同颜色空间上正则化项的平衡点。推导了欧拉-拉格朗日方程,表明CSTV考虑了所有颜色通道的耦合和每个颜色通道内的局部平滑。提出了一种四元数算子分割方法来增强CSTV正则化模型对彩色伪像的抑制能力。这种策略也适用于众所周知的颜色去模糊模型。在彩色图像数据库上的数值实验验证了该模型和算法的有效性。该方法恢复的彩色图像成功地保留了颜色和空间信息,并且在PSNR、SSIM、MSE和CIEde2000方面都比目前最先进的方法恢复的图像质量更高。
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