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PreviewIssue DateTitleAuthor(s)
2016Learning sparse confidence-weighted classifier on very high dimensional dataTan, M.; Yan, Y.; Wang, L.; Van Den Hengel, A.; Tsang, I.; Shi, Q.; 30th AAAI Conference on Artificial Intelligence (AAAI) (12 Feb 2016 - 17 Feb 2016 : Phoenix, AZ)
2016Joint probabilistic matching using m-best solutionsRezatofighi, S.; Milan, A.; Zhang, Z.; Shi, Q.; Dick, A.; Reid, I.; 29th IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPR 2016) (26 Jun 2016 - 1 Jul 2016 : Las Vegas, NV)
2016Pairwise matching through max-weight bipartite belief propagationZhang, Z.; Shi, Q.; McAuley, J.; Wei, W.; Zhang, Y.; Van Den Hengel, A.; 29th IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPR 2016) (26 Jun 2016 - 1 Jul 2016 : Las Vegas, NV)
2016Proximal riemannian pursuit for large-scale trace-norm minimizationTan, M.; Xiao, S.; Gao, J.; Xu, D.; Van Den Hengel, A.; Shi, Q.; 29th IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2016) (26 Jun 2016 - 1 Jul 2016 : Las Vegas, NV)
2016Cluster sparsity field for hyperspectral imagery denoisingZhang, L.; Wei, W.; Zhang, Y.; Shen, C.; Van Den Hengel, A.; Shi, Q.; Leibe, B.; Matas, J.; Sebe, N.; Welling, M.; 14th European Conference on Computer Vision (ECCV) (8 Oct 2016 - 16 Oct 2016 : Amsterdam, Netherlands)
2016Blind image deconvolution by automatic gradient activationGong, D.; Tan, M.; Zhang, Y.; Van Den Hengel, A.; Shi, Q.; 29th IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2016) (26 Jun 2016 - 1 Jul 2016 : Las Vegas, NV)
2016Efficient orthogonal non-negative matrix factorization over stiefel manifoldZhang, W.; Tan, M.; Sheng, Q.; Yao, L.; Shi, Q.; ACM International Conference on Information and Knowledge Management (CIKM '16) (24 Oct 2016 - 28 Oct 2016 : Indianapolis, IN, USA)
2016Dictionary learning for promoting structured sparsity in hyperspectral compressive sensingZhang, L.; Wei, W.; Zhang, Y.; Shen, C.; Van Den Hengel, A.; Shi, Q.