基于Radon变换的抖动图像模糊边缘轮廓核估计

C. Fasil, C. Jiji
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引用次数: 0

摘要

由于相机在曝光过程中的抖动而引起的运动模糊常常导致图像中出现明显的伪影。在本文中,我们解决了从其模糊版本恢复真实图像的问题。这个问题很有挑战性,因为模糊核和清晰图像都是未知的。去模糊图像的质量与估计的模糊核的正确性密切相关。在这项工作中,我们专注于使用Radon变换进行模糊核估计。它是通过分析模糊图像中的边缘,并在那里构造模糊核的投影来完成的。模糊核的投影估计是通过结合模糊核的稀疏特性来完成的。利用估计的投影,通过l1最小化来解决这个问题。在构建核后,我们使用非盲反卷积算法来生成清晰的图像。结果表明,该方法适用于具有明显边缘的模糊图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kernel estimation from blurred edge profiles using Radon Transform for shaken images
Motion blur due to camera shake during exposure often leads to noticeable artifacts in images. In this paper, we address the problem of recovering the true image from its blurred version. The problem is challenging since both the blur kernel and the sharp image are unknown. The quality of a deblurred image is closely related to the correctness of the estimated blur kernel. In this work we focus on the use of Radon Transform for blur kernel estimation. It is done by analyzing edges in the blurred image and there by constructing the projections of the blur kernel. Estimation of the blur kernel from its projections is done by incorporating the sparse nature of the blur kernel. The problem is solved through l1 minimization making use of the estimated projections. After building the kernel, we use a non-blind deconvolution algorithm for producing the sharp image. Results show that this approach is well suited for blurred images having significant edges.
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