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Multi-Scale Grid Network for Image Deblurring With High-Frequency Guidance

Liu, Yang; Fang, Faming*; Wang, Tingting; Li, Juncheng; Sheng, Yun; Zhang, Guixu
Science Citation Index Expanded
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摘要

It has been demonstrated that the blurring process reduces the high-frequency information of the original sharp image, so the main challenge for image deblurring is to reconstruct high-frequency information from the blurry image. In this paper, we propose a novel image deblurring framework to focus on the reconstruction of high-frequency information, which consists of two main subnetworks: a high-frequency reconstruction subnetwork (HFRSN) and a multi-scale grid subnetwork (MSGSN). The HFRSN is built to reconstruct latent high-frequency information from multiple scale blurry images. The MSGSN performs deblurring processes with high-frequency guidance at different scales simultaneously. Besides, in order to better use high-frequency information to restore sharpening images, we designed a high-frequency information aggregation (HFAG) module and a high-frequency information attention (HFAT) module in MSGSN. The HFAG module is designed to fuse high-frequency features and image features at the feature extraction stage, and the HFAT module is built to enhance the feature reconstruction stage. Extensive experiments on different datasets show the effectiveness and efficiency of our method.

关键词

Image reconstruction Feature extraction Image restoration Image edge detection Kernel Image resolution Semantics Blind image deblurring image processing high-frequency guidance convolutional neural networks multi-scale