特定类的图像去模糊

Saeed Anwar, C. P. Huynh, F. Porikli
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引用次数: 33

摘要

在图像去模糊中,一个基本问题是模糊核抑制了一些难以可靠恢复的空间频率。在本文中,我们探讨了一类特定的图像先验恢复空间频率衰减的模糊过程的潜力。具体来说,我们设计了一个基于类特定子空间的图像强度响应带通滤波器的先验。我们了解到,这些子空间在所有频带上的聚合可以作为一个很好的类特定先验,用于恢复用一般图像先验无法恢复的频率。在广泛的验证中,我们的方法配备了上述先验,在图像PSNR方面比许多最先进的方法产生更高的图像质量,在各种图像类别中,包括人像,汽车,猫,行人和家居物品,图像质量最高可达5 dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Class-Specific Image Deblurring
In image deblurring, a fundamental problem is that the blur kernel suppresses a number of spatial frequencies that are difficult to recover reliably. In this paper, we explore the potential of a class-specific image prior for recovering spatial frequencies attenuated by the blurring process. Specifically, we devise a prior based on the class-specific subspace of image intensity responses to band-pass filters. We learn that the aggregation of these subspaces across all frequency bands serves as a good class-specific prior for the restoration of frequencies that cannot be recovered with generic image priors. In an extensive validation, our method, equipped with the above prior, yields greater image quality than many state-of-the-art methods by up to 5 dB in terms of image PSNR, across various image categories including portraits, cars, cats, pedestrians and household objects.
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