一种最大匹配面积图像去噪方法

Jack Gaston, J. Ming, D. Crookes
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引用次数: 0

摘要

鉴于基于补丁的图像去噪方法的成功,本文解决了补丁大小选择的不适定问题。在存在良好匹配的情况下,大的斑块大小可以提高噪声的鲁棒性,但由于罕见的斑块效应,也可能导致纹理区域出现伪影;较小的补丁尺寸更准确地重建细节,但有可能过度拟合均匀区域的噪声。针对灰度图像去噪问题,提出了联合优化每个匹配patch的身份和大小,并给出了几种实现方法。该方法在不受可用数据和噪声水平限制的情况下,有效地选择最大的匹配区域,提高了噪声的鲁棒性。在标准测试图像上的实验表明,我们的方法能够在更平滑的图像区域上改进固定大小的重建,特别是在高噪声水平下。
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A largest matching area approach to image denoising
Given the success of patch-based approaches to image denoising, this paper addresses the ill-posed problem of patch size selection. Large patch sizes improve noise robustness in the presence of good matches, but can also lead to artefacts in textured regions due to the rare patch effect; smaller patch sizes reconstruct details more accurately but risk over-fitting to the noise in uniform regions. We propose to jointly optimize each matching patch's identity and size for grayscale image denoising, and present several implementations. The new approach effectively selects the largest matching areas, subject to the constraints of the available data and noise level, to improve noise robustness. Experiments on standard test images demonstrate our approach's ability to improve on fixed-size reconstruction, particularly at high noise levels, on smoother image regions.
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