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Efficient Multi-Scale Network with Learnable Discrete Wavelet Transform for Blind Motion Deblurring

Xin Gao, Tianheng Qiu, Xinyu Zhang, Hanlin Bai, Kang Liu, Xuan Huang, Wei Hu, Guoying Zhang, Huaping Liu

202457 citationsDOI

Abstract

Coarse-to-fine schemes are widely used in traditional single-image motion deblur; however, in the context of deep learning, existing multi-scale algorithms not only require the use of complex modules for feature fusion of low-scale RGB images and deep semantics, but also manually generate low-resolution pairs of images that do not have sufficient confidence. In this work, we propose a multi-scale network based on single-input and multiple-outputs(SIMO) for motion deblurring. This simplifies the complexity of algorithms based on a coarse-to-fine scheme. To alleviate restoration defects impacting detail information brought about by using a multi-scale architecture, we combine the characteristics of real-world blurring trajectories with a learnable wavelet transform module to focus on the directional continuity and frequency features of the step-by-step transitions between blurred images to sharp images. In conclusion, we propose a multi-scale network with a learnable discrete wavelet transform (MLWNet), which exhibits state-of-the-art performance on multiple real-world deblurred datasets, in terms of both subjective and objective quality as well as computational efficiency. Our code is available on https://github.com/thqiu0419/MLWNet.

Topics & Concepts

DeblurringDiscrete wavelet transformComputer scienceWaveletWavelet transformScale (ratio)Artificial intelligenceMotion (physics)Lifting schemeComputer visionPattern recognition (psychology)Image restorationImage (mathematics)Image processingPhysicsQuantum mechanicsAdvanced Image Processing TechniquesImage and Signal Denoising MethodsDigital Media Forensic Detection
Efficient Multi-Scale Network with Learnable Discrete Wavelet Transform for Blind Motion Deblurring | Litcius