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Haiying Wang

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School of Automation, Harbin University of Science and Technology, Harbin, 150080, China

EAR-U-Net: EfficientNet and attention-based residual U-Net for automatic liver segmentation in CT

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Oct 03, 2021
Jinke Wang, Xiangyang Zhang, Peiqing Lv, Lubiao Zhou, Haiying Wang

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Rethinking the constraints of multimodal fusion: case study in Weakly-Supervised Audio-Visual Video Parsing

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May 30, 2021
Jianning Wu, Zhuqing Jiang, Shiping Wen, Aidong Men, Haiying Wang

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Taylor saves for later: disentanglement for video prediction using Taylor representation

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May 24, 2021
Ting Pan, Zhuqing Jiang, Jianan Han, Shiping Wen, Aidong Men, Haiying Wang

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SAR-U-Net: squeeze-and-excitation block and atrous spatial pyramid pooling based residual U-Net for automatic liver CT segmentation

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Mar 11, 2021
Jinke Wang, Peiqing Lv, Haiying Wang, Changfa Shi

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Bridge the Vision Gap from Field to Command: A Deep Learning Network Enhancing Illumination and Details

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Jan 20, 2021
Zhuqing Jiang, Chang Liu, Ya'nan Wang, Kai Li, Aidong Men, Haiying Wang, Haiyong Luo

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Shed Various Lights on a Low-Light Image: Multi-Level Enhancement Guided by Arbitrary References

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Jan 04, 2021
Ya'nan Wang, Zhuqing Jiang, Chang Liu, Kai Li, Aidong Men, Haiying Wang

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A Switched View of Retinex: Deep Self-Regularized Low-Light Image Enhancement

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Jan 03, 2021
Zhuqing Jiang, Haotian Li, Liangjie Liu, Aidong Men, Haiying Wang

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Incremental Transductive Learning Approaches to Schistosomiasis Vector Classification

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Apr 06, 2017
Terence Fusco, Yaxin Bi, Haiying Wang, Fiona Browne

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