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Nonedge-speci?c adaptive scheme for highly robust blind motion deblurring of natural images

Version 2 2024-03-13, 09:11
Version 1 2024-03-01, 13:17
journal contribution
posted on 2024-03-13, 09:11 authored by Chao Wang, Yong Yue, Feng Dong, Yubo Tao, Xiangyin Ma, G. Clapworthy, Hai Lin, Xujiong Ye

Blind motion deblurring estimates a sharp image from a motion blurred image without the knowledge of the blurkernel. Although significant progress has been made on tackling this problem, existing methods, when applied to highly diverse natural images, are still far from stable. This paper focuses on the robustness of blind motion deblurring methods toward image diversity—a critical problem that has been previously neglected for years. We classify the existing methods into two schemes and analyze their robustness using an image set consisting of 1.2 million natural images. The first scheme is edge-specific, as it relies on the detection and prediction of large-scale step edges. This scheme is sensitive to the diversity of the image edges in natural images. The second scheme is nonedge-specific and explores various image statistics, such as the prior distributions. This scheme is sensitive to statistical variation over different images. Based on the analysis, we address the robustness by proposing a novel nonedge-specific adaptive scheme (NEAS), which features a new prior that is adaptive to the variety of textures in natural images. By comparing the performance of NEAS against the existing methods on a very large image set, we demonstrate its advance beyond the state-of-the-art.

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

IEEE Transactions on Image Processing

Volume

22

Issue

3

Pages/Article Number

884-897

Publisher

IEEE Signal Processing Society

ISSN

1057-7149

eISSN

1941-0042

Date Submitted

2013-02-28

Date Accepted

2013-03-01

Date of First Publication

2013-03-01

Date of Final Publication

2013-03-01

Date Document First Uploaded

2013-03-13

ePrints ID

7750

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