Neural Maximum A Posteriori Estimation on Unpaired Data for Motion
Deblurring
- URL: http://arxiv.org/abs/2204.12139v1
- Date: Tue, 26 Apr 2022 08:09:47 GMT
- Title: Neural Maximum A Posteriori Estimation on Unpaired Data for Motion
Deblurring
- Authors: Youjian Zhang, Chaoyue Wang, Dacheng Tao
- Abstract summary: We propose a Neural Maximum A Posteriori (NeurMAP) estimation framework for training neural networks to recover blind motion information and sharp content from unpaired data.
The proposed NeurMAP is an approach to existing deblurring neural networks, and is the first framework that enables training image deblurring networks on unpaired datasets.
- Score: 87.97330195531029
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Real-world dynamic scene deblurring has long been a challenging task since
paired blurry-sharp training data is unavailable. Conventional Maximum A
Posteriori estimation and deep learning-based deblurring methods are restricted
by handcrafted priors and synthetic blurry-sharp training pairs respectively,
thereby failing to generalize to real dynamic blurriness. To this end, we
propose a Neural Maximum A Posteriori (NeurMAP) estimation framework for
training neural networks to recover blind motion information and sharp content
from unpaired data. The proposed NeruMAP consists of a motion estimation
network and a deblurring network which are trained jointly to model the
(re)blurring process (i.e. likelihood function). Meanwhile, the motion
estimation network is trained to explore the motion information in images by
applying implicit dynamic motion prior, and in return enforces the deblurring
network training (i.e. providing sharp image prior). The proposed NeurMAP is an
orthogonal approach to existing deblurring neural networks, and is the first
framework that enables training image deblurring networks on unpaired datasets.
Experiments demonstrate our superiority on both quantitative metrics and visual
quality over state-of-the-art methods. Codes are available on
https://github.com/yjzhang96/NeurMAP-deblur.
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