A Comprehensive Survey on Deep Neural Image Deblurring
- URL: http://arxiv.org/abs/2310.04719v1
- Date: Sat, 7 Oct 2023 07:29:42 GMT
- Title: A Comprehensive Survey on Deep Neural Image Deblurring
- Authors: Sajjad Amrollahi Biyouki, Hoon Hwangbo
- Abstract summary: Image deblurring tries to eliminate degradation elements of an image causing blurriness and improve the quality of an image for better texture and object visualization.
Traditionally, prior-based optimization approaches predominated in image deblurring, but deep neural networks recently brought a major breakthrough in the field.
We outline the most popular deep neural network structures used in deblurring applications, describe their strengths and novelties, summarize performance metrics, and introduce broadly used datasets.
- Score: 0.76146285961466
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Image deblurring tries to eliminate degradation elements of an image causing
blurriness and improve the quality of an image for better texture and object
visualization. Traditionally, prior-based optimization approaches predominated
in image deblurring, but deep neural networks recently brought a major
breakthrough in the field. In this paper, we comprehensively review the recent
progress of the deep neural architectures in both blind and non-blind image
deblurring. We outline the most popular deep neural network structures used in
deblurring applications, describe their strengths and novelties, summarize
performance metrics, and introduce broadly used datasets. In addition, we
discuss the current challenges and research gaps in this domain and suggest
potential research directions for future works.
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