Discriminative Non-blind Deblurring

Uwe Schmidt, C. Rother, Sebastian Nowozin, Jeremy Jancsary, S. Roth
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引用次数: 122

Abstract

Non-blind deblurring is an integral component of blind approaches for removing image blur due to camera shake. Even though learning-based deblurring methods exist, they have been limited to the generative case and are computationally expensive. To this date, manually-defined models are thus most widely used, though limiting the attained restoration quality. We address this gap by proposing a discriminative approach for non-blind deblurring. One key challenge is that the blur kernel in use at test time is not known in advance. To address this, we analyze existing approaches that use half-quadratic regularization. From this analysis, we derive a discriminative model cascade for image deblurring. Our cascade model consists of a Gaussian CRF at each stage, based on the recently introduced regression tree fields. We train our model by loss minimization and use synthetically generated blur kernels to generate training data. Our experiments show that the proposed approach is efficient and yields state-of-the-art restoration quality on images corrupted with synthetic and real blur.
判别非盲去模糊
非盲去模糊是消除相机抖动引起的图像模糊的盲方法的一个组成部分。尽管存在基于学习的去模糊方法,但它们仅限于生成情况,并且计算成本很高。到目前为止,手工定义的模型是最广泛使用的,尽管限制了获得的恢复质量。我们通过提出一种非盲去模糊的判别方法来解决这一差距。一个关键的挑战是,在测试时使用的模糊内核是事先不知道的。为了解决这个问题,我们分析了使用半二次正则化的现有方法。从这个分析中,我们得到了一个判别模型级联图像去模糊。我们的级联模型由每个阶段的高斯CRF组成,基于最近引入的回归树域。我们使用损失最小化方法训练模型,并使用合成模糊核生成训练数据。我们的实验表明,所提出的方法是有效的,并产生了最先进的恢复质量的图像损坏与合成和真实模糊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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