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arxiv: 1612.06508 · v1 · pith:PTVFWHSHnew · submitted 2016-12-20 · 💻 cs.CV

Deeply Aggregated Alternating Minimization for Image Restoration

classification 💻 cs.CV
keywords imagerestorationframeworkaggregatedalgorithmalternatingdeepdeeply
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Regularization-based image restoration has remained an active research topic in computer vision and image processing. It often leverages a guidance signal captured in different fields as an additional cue. In this work, we present a general framework for image restoration, called deeply aggregated alternating minimization (DeepAM). We propose to train deep neural network to advance two of the steps in the conventional AM algorithm: proximal mapping and ?- continuation. Both steps are learned from a large dataset in an end-to-end manner. The proposed framework enables the convolutional neural networks (CNNs) to operate as a prior or regularizer in the AM algorithm. We show that our learned regularizer via deep aggregation outperforms the recent data-driven approaches as well as the nonlocalbased methods. The flexibility and effectiveness of our framework are demonstrated in several image restoration tasks, including single image denoising, RGB-NIR restoration, and depth super-resolution.

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