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Interleaved Regression Tree Field Cascades for Blind Image Deconvolution
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This code release accompanies the paper [1] and is based on the "Regression Tree Fields" [2, 3, 4] source code of Microsoft Research. Please find included the license terms and conditions. Getting started =============== Compile Deblur/Deblur.cpp so that the binary resides in build/Deblur. Running it will write output to demo/predictions/<Cascade_Depth>. The demo/images folder contains as input the first benchmark image of Levin et al. [5], the rest is available online. Input image names must be listed in demo/test.txt. The initial kernel estimates used for the results reported in the paper are located in demo/initial. To test on different data, place the blurry image in the demo/images folder and the initial blur estimate in demo/initial following the naming convention <input_image_name>_kernel.dlm. Further notes ============= Interleaved blur kernel estimation is activated by calling the Interleaved method of the Dataset object as demonstrated in Deblur.cpp. Note that the optimal number of cascade levels differs for interleaved and standard evaluation. The models folder contains both the interleaved and standard learned RTF models used in the paper. The file kernels.mat contains the recorded LED trajectories of human camera shakes as explained in the paper. ---------------------------------------------------------------------- [1] Kevin Schelten, Sebastian Nowozin, Jeremy Jancsary, Carsten Rother, and Stefan Roth. Interleaved regression tree field cascades for blind image deconvolution. In WACV 2015. [2] Jeremy Jancsary, Sebastian Nowozin, Toby Sharp, and Carsten Rother. Regression tree fields - an efficient, non-parametric approach to image labeling problems. In CVPR 2012. [3] Jeremy Jancsary, Sebastian Nowozin, and Carsten Rother. Loss-specific training of non-parametric image restoration models: A new state of the art. In ECCV 2012. [4] Jeremy Jancsary, Sebastian Nowozin, and Carsten Rother. Learning Convex QP Relaxations for Structured Prediction. In ICML 2013. [5] Anat Levin, Yair Weiss, Fredo Durand, and William T. Freeman. Understanding and evaluating blind deconvolution algorithms. In CVPR 2009.
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