Litcius/Paper detail

DWDN: Deep Wiener Deconvolution Network for Non-Blind Image Deblurring

Jiangxin Dong, Stefan Roth, Bernt Schiele

2021IEEE Transactions on Pattern Analysis and Machine Intelligence85 citationsDOI

Abstract

We present a simple and effective approach for non-blind image deblurring, combining classical techniques and deep learning. In contrast to existing methods that deblur the image directly in the standard image space, we propose to perform an explicit deconvolution process in a feature space by integrating a classical Wiener deconvolution framework with learned deep features. A multi-scale cascaded feature refinement module then predicts the deblurred image from the deconvolved deep features, progressively recovering detail and small-scale structures. The proposed model is trained in an end-to-end manner and evaluated on scenarios with simulated Gaussian noise, saturated pixels, or JPEG compression artifacts as well as real-world images. Moreover, we present detailed analyses of the benefit of the feature-based Wiener deconvolution and of the multi-scale cascaded feature refinement as well as the robustness of the proposed approach. Our extensive experimental results show that the proposed deep Wiener deconvolution network facilitates deblurred results with visibly fewer artifacts and quantitatively outperforms state-of-the-art non-blind image deblurring methods by a wide margin.

Topics & Concepts

DeblurringDeconvolutionArtificial intelligenceBlind deconvolutionRobustness (evolution)Wiener deconvolutionComputer sciencePattern recognition (psychology)Feature (linguistics)Computer visionFeature vectorPixelImage restorationMathematicsImage processingImage (mathematics)AlgorithmLinguisticsChemistryGenePhilosophyBiochemistryAdvanced Image Processing TechniquesImage and Signal Denoising MethodsImage Processing Techniques and Applications