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PreviewIssue DateTitleAuthor(s)
2018Bootstrapping the performance of webly supervised semantic segmentationShen, T.; Lin, G.; Shen, C.; Reid, I.; IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) (18 Jun 2018 - 23 Jun 2018 : Salt Lake City, USA)
2015Deeply learning the messages in message passing inferenceLin, G.; Shen, C.; Reid, I.; Van Den Hengel, A.; Cortes, C.; Lawrence, N.; Lee, D.; Sugiyama, M.; Garnett, R.; 29th Annual Conference on Neural Information Processing Systems 2015 (NIPS 2015) (7 Dec 2015 - 12 Dec 2015 : Montreal)
2015Sequence searching with deep-learnt depth for condition-and viewpoint-invariant route-based place recognitionMilford, M.; Lowry, S.; Sunderhauf, N.; Shirazi, S.; Pepperell, E.; Upcroft, B.; Shen, C.; Lin, G.; Liu, F.; Cadena, C.; Reid, I.; Computer Society Conference on Computer Vision and Pattern Recognition Workshops (CVPRW) (7 Jun 2015 - 12 Jun 2015 : Boston, MA)
2016Efficient piecewise training of deep structured models for semantic segmentationLin, G.; Shen, C.; Van Den Hengel, A.; Reid, I.; 29th IEEE Conference on Computer Vision and Pattern Recognition (CVPR 2016) (26 Jun 2016 - 1 Jul 2016 : Las Vegas, NV)
2017RefineNet: multi-path refinement networks with identity mappings for high-resolution semantic segmentationLin, G.; Milan, A.; Shen, C.; Reid, I.; IEEE Conference on Computer Vision and Pattern Recognition (CVPR) (21 Jul 2017 - 26 Jul 2017 : Honolulu, Hawaii)
2016Fast training of triplet-based deep binary embedding networksZhuang, B.; Lin, G.; Shen, C.; Reid, I.; Computer Society Conference on Computer Vision and Pattern Recognition (CVPRW) (27 Jun 2016 - 30 Jun 2016 : Las Vegas, NV)
2016Exploring context with deep structured models for semantic segmentationLin, G.; Shen, C.; Hengel, A.; Reid, I.
2016Learning depth from single monocular images using deep convolutional neural fieldsLiu, F.; Shen, C.; Lin, G.; Reid, I.