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PreviewIssue DateTitleAuthor(s)
2020Attention-based network for low-light image enhancementZhang, C.; Yan, Q.; Zhu, Y.; Li, X.; Sun, J.; Zhang, Y.; IEEE International Conference on Multimedia and Expo (ICME) (6 Jul 2020 - 10 Jul 2020 : virtual online)
2020Blindly assess image quality in the wild guided by a self-adaptive hyper networkSu, S.; Yan, Q.; Zhu, Y.; Zhang, C.; Ge, X.; Sun, J.; Zhang, Y.; IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) (14 Jun 2020 - 19 Jun 2020 : virtual online)
2017MPGL: An efficient matching pursuit method for generalized LASSOGong, D.; Tan, M.; Zhang, Y.; Van Den Hengel, A.; Shi, Q.; 31st AAAI Conference on Artificial Intelligence (AAAI-17) (4 Feb 2017 - 9 Feb 2017 : San Francisco)
2017Solving constrained combinatorial optimization problems via MAP inference without high-order penaltiesZhang, Z.; Shi, Q.; McAuley, J.; Wei, W.; Zhang, Y.; Yao, R.; Van Den Hengel, A.; Thirty-first AAAI Conference on Artificial Intelligence (AAAI-17) (4 Feb 2017 - 9 Feb 2017 : San Francisco)
2018Fusing texture, shape and deep model-learned information at decision level for automated classification of lung nodules on chest CTXie, Y.; Zhang, J.; Xia, Y.; Fulham, M.; Zhang, Y.
2017Part-based robust tracking using online latent structured learningYao, R.; Shi, Q.; Shen, C.; Zhang, Y.; Van Den Hengel, A.
2019Unsupervised domain adaptation using robust class-wise matchingZhang, L.; Wang, P.; Wei, W.; Lu, H.; Shen, C.; van den Hengel, A.; Zhang, Y.
2020Adaptive importance learning for improving lightweight image super-resolution networkZhang, L.; Wang, P.; Shen, C.; Liu, L.; Wei, W.; Zhang, Y.; van den Hengel, A.
2020Accurate tensor completion via adaptive low-rank representationZhang, L.; Wei, W.; Shi, Q.; Shen, C.; van den Hengel, A.; Zhang, Y.
2019MPTV: matching pursuit based total variation minimization for image deconvolutionGong, D.; Tan, M.; Shi, Q.; van den Hengel, A.; Zhang, Y.