Non-Uniform Blind Deblurring By Reblurring

2017 IEEE INTERNATIONAL CONFERENCE ON COMPUTER VISION (ICCV)(2017)

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摘要
We present an approach for blind image deblurring, which handles non-uniform blurs. Our algorithm has two main components: (i) A new method for recovering the unknown blur-field directly from the blurry image, and (ii) A method for deblurring the image given the recovered non-uniform blur-field. Our blur-field estimation is based on analyzing the spectral content of blurry image patches by Re-blurring them. Being unrestricted by any training data, it can handle a large variety of blur sizes, yielding superior blur-field estimation results compared to training-based deep-learning methods. Our non-uniform deblurring algorithm is based on the internal image-specific patch-recurrence prior. It attempts to recover a sharp image which, on one hand-results in the blurry image under our estimated blur-field, and on the other hand-maximizes the internal recurrence of patches within and across scales of the recovered sharp image. The combination of these two components gives rise to a blind-deblurring algorithm, which exceeds the performance of state-of-the-art CNN-based blind-deblurring by a significant margin, without the need for any training data.
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关键词
CNN-based blind-deblurring,reblurring,blind-deblurring algorithm,recovered sharp image,estimated blur-field,internal image-specific patch-recurrence,nonuniform deblurring algorithm,deep-learning methods,superior blur-field estimation results,blur sizes,training data,blurry image patches,nonuniform blur-field,unknown blur-field,nonuniform blurs,blind image deblurring,nonuniform blind deblurring
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