CurvPnP: Plug-and-play Blind Image Restoration with Deep Curvature
Denoiser
- URL: http://arxiv.org/abs/2211.07286v1
- Date: Mon, 14 Nov 2022 11:30:24 GMT
- Title: CurvPnP: Plug-and-play Blind Image Restoration with Deep Curvature
Denoiser
- Authors: Yutong Li and Yuping Duan
- Abstract summary: existing plug-and-play image restoration methods are designed for non-blind denoising.
We propose a novel framework with blind prior, which can deal with more complicated image restoration problems in the real world.
Our model is shown to be able to recover the fine image details tiny structures even when the noise level is different.
- Score: 7.442030347967277
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Due to the development of deep learning-based denoisers, the plug-and-play
strategy has achieved great success in image restoration problems. However,
existing plug-and-play image restoration methods are designed for non-blind
Gaussian denoising such as zhang et al (2022), the performance of which visibly
deteriorate for unknown noises. To push the limits of plug-and-play image
restoration, we propose a novel framework with blind Gaussian prior, which can
deal with more complicated image restoration problems in the real world. More
specifically, we build up a new image restoration model by regarding the noise
level as a variable, which is implemented by a two-stage blind Gaussian
denoiser consisting of a noise estimation subnetwork and a denoising
subnetwork, where the noise estimation subnetwork provides the noise level to
the denoising subnetwork for blind noise removal. We also introduce the
curvature map into the encoder-decoder architecture and the supervised
attention module to achieve a highly flexible and effective convolutional
neural network. The experimental results on image denoising, deblurring and
single-image super-resolution are provided to demonstrate the advantages of our
deep curvature denoiser and the resulting plug-and-play blind image restoration
method over the state-of-the-art model-based and learning-based methods. Our
model is shown to be able to recover the fine image details and tiny structures
even when the noise level is unknown for different image restoration tasks. The
source codes are available at https://github.com/Duanlab123/CurvPnP.
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