Depth estimation and blur removal from a single out-of-focus image
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Anwar, Saeed
Hayder, Zeeshan
Porikli, Fatih
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BMVA Press
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This paper presents a depth estimation method that leverages rich representations learned from cascaded convolutional and fully connected neural networks operating on a patch-pooled set of feature maps. Our method is very fast and it substantially improves depth accuracy over the state-of-the-art alternatives, and from this, we computationally reconstruct an all-focus image and achieve synthetic re-focusing, all from a single image. Our experiments on benchmark datasets such as Make3D and NYU-v2 demonstrate superior performance in comparison to other available depth estimation methods by reducing the root-mean-squared error by 57% & 46%, and blur removal methods by 0.36 dB & 0.72 dB in PSNR, respectively.
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Proceedings of the 28th British Machine Vision Conference, BMVC 2017
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2099-12-31
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