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dc.contributor.author민동보*
dc.date.accessioned2021-01-14T16:30:25Z-
dc.date.available2021-01-14T16:30:25Z-
dc.date.issued2020*
dc.identifier.issn1057-7149*
dc.identifier.issn1941-0042*
dc.identifier.otherOAK-27912*
dc.identifier.urihttps://dspace.ewha.ac.kr/handle/2015.oak/256012-
dc.description.abstractRegularization-based image restoration is one of the most powerful tools in image processing and computer vision thanks to its flexibility for handling various inverse problems. However, designing an optimal regularization function still remains unsolved since natural images and related scene types have a complex structure. In this paper, we present a general and principled framework, called deeply aggregated alternating minimization (DeepAM). We design a convolutional neural network (CNN) to implicitly parameterize the regularizer of the alternating minimization (AM) algorithm. Contrary to the conventional AM algorithm based on a point-wise proximal mapping, the DeepAM projects intermediate estimate into a set of natural images via deep aggregation. Since the CNN is fully integrated into the AM procedure, all parameters can be jointly optimized through end-to-end training. These properties enable the DeepAM to converge with a small number of iterations, while maintaining an algorithmic simplicity. We show that the DeepAM outperforms state-of-the-art methods, including nonlocal-based methods, Plug-and-Play regularization, and recent data-driven approaches. The effectiveness of our framework is demonstrated in a variety of image restoration tasks: Guassian denoising, deraining, deblurring, super-resolution, color-guided depth upsampling, and RGB/NIR restoration.*
dc.languageEnglish*
dc.publisherIEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC*
dc.subjectImage restoration*
dc.subjectMinimization*
dc.subjectNoise reduction*
dc.subjectImage resolution*
dc.subjectOptimization*
dc.subjectTraining*
dc.subjectTask analysis*
dc.subjectRegularization-based image restoration*
dc.subjectjoint restoration*
dc.subjectconvolutional neural network*
dc.subjectalternating minimization*
dc.subjecthalf-quadratic minimization*
dc.subjectproximal mapping*
dc.titleLearning Deeply Aggregated Alternating Minimization for General Inverse Problems*
dc.typeArticle*
dc.relation.volume29*
dc.relation.indexSCIE*
dc.relation.indexSCOPUS*
dc.relation.startpage8012*
dc.relation.lastpage8027*
dc.relation.journaltitleIEEE TRANSACTIONS ON IMAGE PROCESSING*
dc.identifier.doi10.1109/TIP.2020.3010082*
dc.identifier.wosidWOS:000554885000002*
dc.author.googleJung, Hyungjoo*
dc.author.googleKim, Youngjung*
dc.author.googleMin, Dongbo*
dc.author.googleJang, Hyunsung*
dc.author.googleHa, Namkoo*
dc.author.googleSohn, Kwanghoon*
dc.contributor.scopusid민동보(7201669172)*
dc.date.modifydate20240322133757*
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인공지능대학 > 컴퓨터공학과 > Journal papers
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