Deep Mean-Shift Priors for Image Restoration
About
In this paper we introduce a natural image prior that directly represents a Gaussian-smoothed version of the natural image distribution. We include our prior in a formulation of image restoration as a Bayes estimator that also allows us to solve noise-blind image restoration problems. We show that the gradient of our prior corresponds to the mean-shift vector on the natural image distribution. In addition, we learn the mean-shift vector field using denoising autoencoders, and use it in a gradient descent approach to perform Bayes risk minimization. We demonstrate competitive results for noise-blind deblurring, super-resolution, and demosaicing.
Siavash Arjomand Bigdeli, Meiguang Jin, Paolo Favaro, Matthias Zwicker• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Super-Resolution | Set5 3 (test) | PSNR (dB)35.16 | 87 | |
| Super-Resolution | Set14 34 (test) | PSNR (dB)30.99 | 32 | |
| Non-blind deblurring | Berkeley (50 images) | PSNR (dB) at sigma_n=2.5526 | 12 | |
| Non-blind deblurring | Levin 32 images | PSNR (dB) at sigma_n=2.5532.57 | 12 | |
| Demosaicing | Panasonic dataset (test) | PSNR38.7 | 6 |
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