基于训练字典和曲线稀疏表示的盲图像去模糊

Liang Feng, Qian Huang, Tingfa Xu, Shao Li
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引用次数: 4

摘要

运动模糊是造成数码摄影图像质量差的最重要也是最常见的伪影之一,其产生的原因是多方面的。在成像过程中,如果物体在场景中快速移动或相机在曝光间隔内移动,则场景图像会沿着相机与场景之间的相对运动方向模糊,例如相机抖动,大气湍流等。近年来,稀疏表示模型作为一种描述自然图像的有效方法,在信号和图像处理中得到了广泛的应用。本文提出了一种基于稀疏表示的图像去模糊方法。通过KSVD算法从训练图像样本中学习一个过完备字典来表示潜在图像。运动模糊核在图像域中可以看作是一个分段平滑函数,它的支持近似为一条光滑的细曲线,因此我们采用曲线来表示模糊核。过完备字典和曲波系统都具有较高的稀疏性,提高了对噪声的鲁棒性,更能满足观察者的视觉需求。利用这两种先验算法构建了模糊图像的恢复模型,并利用交替最小化技术成功地解决了优化问题。实验结果表明,该方法能有效地保留原始图像的纹理,抑制环状伪影。
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Blind image deblurring based on trained dictionary and curvelet using sparse representation
Motion blur is one of the most significant and common artifacts causing poor image quality in digital photography, in which many factors resulted. In imaging process, if the objects are moving quickly in the scene or the camera moves in the exposure interval, the image of the scene would blur along the direction of relative motion between the camera and the scene, e.g. camera shake, atmospheric turbulence. Recently, sparse representation model has been widely used in signal and image processing, which is an effective method to describe the natural images. In this article, a new deblurring approach based on sparse representation is proposed. An overcomplete dictionary learned from the trained image samples via the KSVD algorithm is designed to represent the latent image. The motion-blur kernel can be treated as a piece-wise smooth function in image domain, whose support is approximately a thin smooth curve, so we employed curvelet to represent the blur kernel. Both of overcomplete dictionary and curvelet system have high sparsity, which improves the robustness to the noise and more satisfies the observer's visual demand. With the two priors, we constructed restoration model of blurred images and succeeded to solve the optimization problem with the help of alternating minimization technique. The experiment results prove the method can preserve the texture of original images and suppress the ring artifacts effectively.
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