This contains an implementation of the image deblurring algorithm described in: Phase-only image based kernel estimation for single image blind deblurring, CVPR2019.
@inproceedings{pan2019phase, title={Phase-only image based kernel estimation for single image blind deblurring}, author={Pan, Liyuan and Hartley, Richard and Liu, Miaomiao and Dai, Yuchao}, booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition}, pages={6034--6043}, year={2019} }
The codes are tested in MATLAB 2015b (64bit) under ubuntu 14.04 LTS 64bit version with an Intel Core i7-4790 CPU and 6 GB RAM.
- Unpack the package.
- Run "main_uniform.m".
- 'needsys' : 1 for synthetic testing data. Blurred the image with a given kernel.
- 'motion' : 1 for linear kernal.
- 'fast' : 1 for fast processing strategy without coarse-to-fine.
- 'kernel_size': The size of blur kernel.
- 'auto_size' : The scale for autocorrelation.
- 'iter_num' : Iteration number.
- 'lambda_grad' & lambda_l0 & lambda_tv: the weight for the L0/TV regularization.
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The uploaded version is for tackling uniform motion blur. If you want to handle non-uniform blur, please refer to our paper. You need to segment an input blur image to overlapping square patches. For example, we segment the image into small patches in 80*80 with overlapping at 30 pixels.
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If you obtain incorrect result (the algorithm converges to a local minimum), please re-try with slightly changed parameters (e.g., using large blur kernel sizes, fast, or iter_num).
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The results of our method on datasets ('Levin', 'Kohler', 'Gong' and 'Pan') are saved under the folder 'result'.
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Should you have any questions regarding this code and the corresponding results, please contact [email protected]
- Exactly following the equations in our paper.
- Coding (e.g., FFT or correlation) by yourself instead of using in-built functions.
Please also cite the following papers if you use the code to generate data (e.g., images, tables of processing times, etc.) in an academic publication.
[1] Li Xu, Cewu Lu, Yi Xu, and Jiaya Jia. Image smoothing via l0 gradient minimization. ACM Trans. Graph., 30(6):174, 2011
[2] S. Cho, J. Wang, and S. Lee, Handling outliers in non-blind image deconvolution. ICCV 2011.
[3] Jinshan Pan, Deqing Sun, Hanspteter Pfister, and Ming-Hsuan Yang, Blind Image Deblurring Using Dark Channel Prior. CVPR, 2016.
[4] Liyuan Pan, Yuchao Dai, Miaomiao Liu, and Fatih Porikli. Simultaneous stereo video deblurring and scene flow estimation. CVPR. 2017.