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Proceedings ArticleDOI

Image Deblurring via Extreme Channels Prior

TLDR
This work observes that the bright pixels in the clear images are not likely to be bright after the blur process, and proposes a technique fordeblurring such images which elevates the performance of existing motion deblurring algorithms and takes advantage of both Bright and Dark Channel Prior.
Abstract
Camera motion introduces motion blur, affecting many computer vision tasks. Dark Channel Prior (DCP) helps the blind deblurring on scenes including natural, face, text, and low-illumination images. However, it has limitations and is less likely to support the kernel estimation while bright pixels dominate the input image. We observe that the bright pixels in the clear images are not likely to be bright after the blur process. Based on this observation, we first illustrate this phenomenon mathematically and define it as the Bright Channel Prior (BCP). Then, we propose a technique for deblurring such images which elevates the performance of existing motion deblurring algorithms. The proposed method takes advantage of both Bright and Dark Channel Prior. This joint prior is named as extreme channels prior and is crucial for achieving efficient restorations by leveraging both the bright and dark information. Extensive experimental results demonstrate that the proposed method is more robust and performs favorably against the state-of-the-art image deblurring methods on both synthesized and natural images.

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Citations
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Journal ArticleDOI

Blind deblurring with fractional-order calculus and local minimal pixel prior

TL;DR: In this article , a new fractional-order local minimum pixel prior (FOLMP) is proposed by combining fractional order calculus with the L0 regularized FOLMP with the maximum posterior probability, and kernel similarity is employed to adjust the iteration times to accelerate the computational efficiency.
Journal ArticleDOI

Optimized and efficient deblurring through constraint conditional modelling

TL;DR: A CCM (constraint conditional model) is proposed to deblur the image; it learns the direct mapping from the degraded to the absolute clean image and provides handsome tradeoff between the image quality and efficiency.
Journal ArticleDOI

Blind turbulent image deblurring through dual patch-wise pixels prior

- 19 Mar 2023 - 
TL;DR: Wang et al. as discussed by the authors proposed a dual patch-wise pixels (DPP) prior for effective blind deblurring of turbulent images, which has proven both mathematically and experimentally.
Journal ArticleDOI

Motion Blur Image Restoration by Multi-Scale Residual Neural Network

TL;DR: A multi-scale residual network is proposed, which can comprehensively extract image features, enhance image feature fusion, and constrain image generation by combining multi- scale loss function with anti loss function, and is suitable for dealing with various image degradation problems caused by motion blur.
References
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Journal ArticleDOI

Removing camera shake from a single photograph

TL;DR: This work introduces a method to remove the effects of camera shake from seriously blurred images, which assumes a uniform camera blur over the image and negligible in-plane camera rotation.
Journal ArticleDOI

High-quality motion deblurring from a single image

TL;DR: A new algorithm for removing motion blur from a single image is presented using a unified probabilistic model of both blur kernel estimation and unblurred image restoration and is able to produce high quality deblurred results in low computation time.
Proceedings ArticleDOI

Multiscale Combinatorial Grouping

TL;DR: This work first develops a fast normalized cuts algorithm, then proposes a high-performance hierarchical segmenter that makes effective use of multiscale information, and proposes a grouping strategy that combines the authors' multiscales regions into highly-accurate object candidates by exploring efficiently their combinatorial space.
Journal ArticleDOI

Total variation blind deconvolution

TL;DR: A blind deconvolution algorithm based on the total variational (TV) minimization method proposed is presented, and it is remarked that psf's without sharp edges, e.g., Gaussian blur, can also be identified through the TV approach.
Proceedings ArticleDOI

Understanding and evaluating blind deconvolution algorithms

TL;DR: The previously reported failure of the naive MAP approach is explained by demonstrating that it mostly favors no-blur explanations and it is shown that since the kernel size is often smaller than the image size a MAP estimation of the kernel alone can be well constrained and accurately recover the true blur.