Blind motion deblurring from a single image using sparse approximation

Jian-Feng Cai, Hui Ji, Chaoqiang Liu, Zuowei Shen
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引用次数: 317

Abstract

Restoring a clear image from a single motion-blurred image due to camera shake has long been a challenging problem in digital imaging. Existing blind deblurring techniques either only remove simple motion blurring, or need user interactions to work on more complex cases. In this paper, we present an approach to remove motion blurring from a single image by formulating the blind blurring as a new joint optimization problem, which simultaneously maximizes the sparsity of the blur kernel and the sparsity of the clear image under certain suitable redundant tight frame systems (curvelet system for kernels and framelet system for images). Without requiring any prior information of the blur kernel as the input, our proposed approach is able to recover high-quality images from given blurred images. Furthermore, the new sparsity constraints under tight frame systems enable the application of a fast algorithm called linearized Bregman iteration to efficiently solve the proposed minimization problem. The experiments on both simulated images and real images showed that our algorithm can effectively removing complex motion blurring from nature images.
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利用稀疏逼近对单幅图像进行盲运动去模糊
从由相机抖动引起的单一运动模糊图像中恢复清晰图像一直是数字成像领域的难题。现有的盲去模糊技术要么只能去除简单的运动模糊,要么需要用户交互才能处理更复杂的情况。本文提出了一种消除单幅图像运动模糊的方法,该方法将盲模糊作为一种新的联合优化问题,在适当的冗余紧帧系统(对核的曲线系统和对图像的框架系统)下,使模糊核的稀疏性和清晰图像的稀疏性同时最大化。在不需要任何模糊核的先验信息作为输入的情况下,我们提出的方法能够从给定的模糊图像中恢复高质量的图像。此外,在紧框架系统下,新的稀疏性约束使得线性化布雷格曼迭代的快速算法能够有效地解决所提出的最小化问题。在模拟图像和真实图像上的实验表明,该算法可以有效地去除自然图像中的复杂运动模糊。
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