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Graph-Based Blind Image Deblurring From a Single Photograph

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Blind image deblurring, i.e., deblurring without knowledge of the blur kernel, is a highly ill-posed problem. The problem can be solved in two parts: i) estimate a blur kernel from the blurry image, and ii) given estimated blur kernel, de-convolve blurry input to restore the target image. In this paper, we propose a graph-based blind image deblurring algorithm by interpreting an image patch as a signal on a weighted graph. Specifically, we first argue that a skeleton image---a proxy that retains the strong gradients of the target but smooths out the details---can be used to accurately estimate the blur kernel and has a unique bi-modal edge weight distribution. Then, we design a reweighted graph total variation (RGTV) prior that can efficiently promote a bi-modal edge weight distribution given a blurry patch. Further, to analyze RGTV in the graph frequency domain, we introduce a new weight function to represent RGTV as a graph $l_1$-Laplacian regularizer. This leads to a graph spectral filtering interpretation of the prior with desirable properties, including robustness to noise and blur, strong piecewise smooth (PWS) filtering and sharpness promotion. Minimizing a blind image deblurring objective with RGTV results in a non-convex non-differentiable optimization problem. We leverage the new graph spectral interpretation for RGTV to design an efficient algorithm that solves for the skeleton image and the blur kernel alternately. Specifically for Gaussian blur, we propose a further speedup strategy for blind Gaussian deblurring using accelerated graph spectral filtering. Finally, with the computed blur kernel, recent non-blind image deblurring algorithms can be applied to restore the target image. Experimental results demonstrate that our algorithm successfully restores latent sharp images and outperforms state-of-the-art methods quantitatively and qualitatively.

Yuanchao Bai, Gene Cheung, Xianming Liu, Wen Gao• 2018

Related benchmarks

TaskDatasetResultRank
BinarizationEBT Bright Glare
MCC20
11
BinarizationEBT Gentle Light
MCC0.3
11
BinarizationEBT Low Light
MCC0.18
11
BinarizationREBlur Low Light
MCC0.22
11
BinarizationREBlur Gentle Light
MCC0.4
11
BinarizationHQF Gentle Light
MCC0.23
11
BinarizationREBlur Bright Glare
MCC14
11
BinarizationHQF Low Light
MCC8
11
BinarizationHQF Bright Glare
MCC0.1
11
Fiducial Marker TrackingHQF & EBT Gentle Light 1.0 (test)
RMSE3.41
5
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