From learning models of natural image patches to whole image restoration

Daniel Zoran, Yair Weiss
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引用次数: 1396

Abstract

Learning good image priors is of utmost importance for the study of vision, computer vision and image processing applications. Learning priors and optimizing over whole images can lead to tremendous computational challenges. In contrast, when we work with small image patches, it is possible to learn priors and perform patch restoration very efficiently. This raises three questions - do priors that give high likelihood to the data also lead to good performance in restoration? Can we use such patch based priors to restore a full image? Can we learn better patch priors? In this work we answer these questions. We compare the likelihood of several patch models and show that priors that give high likelihood to data perform better in patch restoration. Motivated by this result, we propose a generic framework which allows for whole image restoration using any patch based prior for which a MAP (or approximate MAP) estimate can be calculated. We show how to derive an appropriate cost function, how to optimize it and how to use it to restore whole images. Finally, we present a generic, surprisingly simple Gaussian Mixture prior, learned from a set of natural images. When used with the proposed framework, this Gaussian Mixture Model outperforms all other generic prior methods for image denoising, deblurring and inpainting.
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从学习自然图像斑块模型到整个图像恢复
学习好的图像先验对于视觉、计算机视觉和图像处理应用的研究至关重要。学习先验并对整个图像进行优化可能会带来巨大的计算挑战。相比之下,当我们处理小图像补丁时,可以非常有效地学习先验并执行补丁恢复。这就提出了三个问题——为数据提供高可能性的先验是否也会导致良好的恢复性能?我们可以使用这种基于补丁的先验来恢复完整的图像吗?我们能更好地学习补丁先验吗?在这部作品中,我们回答了这些问题。我们比较了几种补丁模型的似然性,并表明给予数据高似然性的先验在补丁恢复中表现更好。基于这一结果,我们提出了一个通用框架,该框架允许使用任何基于补丁的先验来恢复整个图像,并且可以计算MAP(或近似MAP)估计。我们展示了如何推导一个合适的成本函数,如何优化它,以及如何使用它来恢复整个图像。最后,我们提出了一个通用的,令人惊讶的简单高斯混合先验,从一组自然图像中学习。当与所提出的框架一起使用时,该高斯混合模型优于所有其他通用的图像去噪、去模糊和上色方法。
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