Yongri Piao

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Associate Professor Supervisor of Doctorate Candidates Supervisor of Master's Candidates

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信息与通信工程学院,副教授,博士生导师。本科毕业于吉林大学,博士毕业于韩国国立釜庆大学,2012年回国入职开云平台首页 。主要研究方向为计算机视觉、人工智能、图像处理,计算成像等领域。目前在相关领域共发表学术论文80余篇,谷歌学术引用2000余次,H指数21,包括CCF-A类顶会CVPR/ICCV/NeurIPS/AAAI/ACMMM、中科院一区顶刊IEEE TIP/TCYB/TMM/IJCV,获得华为MindSpore技术认证4项,授权发明专利8项。主持国自然重点/面上/青年基金、中央引导地方科技发展基金、省自然基金市科技创新重大/面上基金华为/美团/KETI等横向项目。曾获计算机视觉顶会ECCV 2020杰出评审专家、AAAI 2022资深程序委员(SPC)、省自然科学学术成果奖 3项 (均排名第一)、省优秀教学成果奖 2项 (排名第三)、全国移动终端应用创新大赛一等奖 (导师)。受邀PRCV2021专题报告、担任IScIDE 2017国际会议专题主席/VALSE 2018执行主席等。目前为CCF计算机视觉专委会/CSIG机器视觉专委会/CAAI智能融合专委会委员;计算机视觉领域顶会/人工智能领域顶会/国际顶刊的审稿人。

  • Google Scholar ID:https://scholar.google.no/citations?user=iQ1oyrgAAAAJ&hl=en&oi=ao

  • Semantic Scholar ID:https://www.semanticscholar.org/author/Yongri-Piao/3051892

  • ORCID ID:https://orcid.org/my-orcid?orcid=0000-0002-0860-252X

  • DBLP ID:https://dblp.org/pid/152/4090


科研项目

2023.01 - 2025.12, 肿瘤***放射治疗系统研制,市科技创新基金-重大项目(进行)

2023.01 - 2023.06, 基于***的三维成像方法研究,韩国电子技术研究院(进行)

2022.01 - 2025.12,面向***目标检测研究,国家自然科学基金-面上项目 (进行)

2022.01 - 2023.12, 基于***前列腺癌精准分割与分级研究,辽肿医工交叉项目(进行)

2021.07 - 2023.06,基于***成像研究,省自然科学基金-面上项目 (进行)

2020.01 - 2023.12,水下***成像方法研究,国家自然科学基金-面上项目 ()

2022.01 - 2023.05,面向***智能检测研究,中央引导地方科技发展资金项目()

2019.01 - 2021.12,基于光场深度学习的显著性目标智能检测研究,市科技创新基金-面上项目(完成)

2018.01 - 2021.12,仿人灵巧手的操作规划方法研究,国家自然科学基金-重点项目(完成)

2021.05 - 2021.07,稠密多视角图像智能合成系统开发,韩国电子技术研究院 (完成)

2020.08 - 2021.08,基于安防场景下的复杂目标跟踪技术合作项目, 华为公司 (完成)

2019.11 - 2020.05,面向于AR/VR的光场智能合成,科技部重点研发项目(完成)

2019.07 - 2019.12,真实感头戴式显示系统设计分析,科技部重点研发项目 (完成)

2019.06 - 2019.12,基于机器学习的车载应用开发,韩国电子技术研究院 (完成)

2017.05 - 2019.04,面向水下暗环境的光子计数集成成像技术研究,省自然科学基金-面上项目 (完成)

2015.01 - 2017.12,基于离轴分布感知结构的三维集成成像技术研究,国家自然科学基金-青年项目 (完成)


代表论文

[28]Yongri Piao, Y. Jiang, M. Zhang, J. Wang, and H. Lu, A patch-aware network for light field salient object detection, IEEE Trans on Cybernetics 2023,53(1) : 379-391,IF: 19.118.(CAA-A)(中科院一区)

[27]C. Lu,Yongri Piao, M. Zhang, H. Lu, Semi-supervised video salient object detection based on uncertainty-guided pseudo labels, NeurIPS 2022.(CCF-A)

[26]M. Zhang, S. Xu,Yongri Piao, D. Shi, S. Lin, H. Lu, PreyNet: Preying on camouflaged objects, ACM MM 2022. (CCF-A)

[25]W. Ren, L. Wang,Yongri Piao, M. Zhang, H. Lu, T. Liu, Adaptive co-teaching for unsupervised monocular depth estimation, ECCV 2022. (CCF-B、清华-A)

[24]J. Li, W. Ji, M. Zhang,Yongri Piao, H. Lu, L. Cheng, Delving into calibrated depth for acccurate RGB-D salient object detection, International Journal of Computer Vision 2022, IF: 13.369. (CCF-A) (中科院一区)

[23]M. Zhang, S. Xu,Yongri Piao, H. Lu,Exploring spatial correlation for light field saliency detection: expansion from a single view,IEEE Trans on Image Processing 2022, 31: 6152-6163,IF: 11.041. (CCF-A) (中科院一区)

[22]W. Ji, G. Yan, J. Li,Yongri Piao, S. Yao, M. Zhang, L. Cheng, H. Lu, DMRA: Depth-induced multi-scale recurrent attention network for RGB-D saliency detection, IEEE Trans on Image Processing 2022, 31:2321-2336,IF: 11.041. (CCF-A) (中科院一区)

[21]M. Zhang, S. Yao, B. Hu,Yongri Piao, W. Ji, C2DFNet: Criss-cross dinamic filter network for RGB-D salient object detection,IEEE Trans on Multimedia 2022, IF: 8.182. (CAA-A) (中科院一区)

[20]Yongri Piao, W. Wei, M. Zhang, Y. Jiang, H. Lu, Noise-sensitive adversarial learning for weakly supervised salient object detection,IEEE Trans on Multimedia2022, IF: 8.182.(CAA-A) (中科院一区)

[19] J. Li, W. Ji, Q. Bi, C. Yan, M. Zhang,Yongri Piao, H. Lu, L. Cheng, Joint semantic mining for weakly supervised RGB-D salient object detection, NeurIPS 2021.(CCF-A)

[18]Yongri Piao, J. Wang, M. Zhang, H. Lu, MF-Net: Multi-filter directive network for weakly supervised salient object detection, ICCV 2021. (CCF-A)

[17] M. Zhang, J. Liu, Y. Wang,Yongri Piao, S. Yao, W. Ji, H. Lu, Z. Luo, Dynamic context-sensitive filtering network forideo salient object detection, ICCV 2021(Oral). (CCF-A)

[16] M. Zhang, T. Liu,Yongri Piao, S. Yao, H. Lu, Auto-MSFNet: Search multi-scale fusion network for salient object detection, ACM MM 2021. (CCF-A)

[15] W. Ji, J. Li, S. Yu, M. Zhang,Yongri Piao, S. Yao, H. Lu, et. al., Calibrated RGB-D salient object detection, CVPR 2021.(CCF-A)

[14] Y. Zhang,Yongri Piao, X. Ji, M. Zhang, Dynamic fusion network for light field depth estimation, PRCV 2021.

[13] M. Zhang, Y. Zhang,Yongri Piao, B. Hu, and H. Lu, Feature reintegration over differential treatment: a top-down and adaptive fusion network for RGB-D SOD, ACM MM 2020. (CCF-A)

[12] M. Zhang, X. Sun, J. Liu, S. Xu,Yongri Piao, H. Lu, Asymmetric two-stream architecture for accurate RGB-D saliency detection, ECCV 2020. (CCF-B、清华-A)

[11] W. Ji, J. Li, M. Zhang,Yongri Piao, H. Lu, Accurate RGB-D salient object detection via collaborative learning, ECCV 2020. (CCF-B、清华-A)

[10] C. Li, R. Cong,Yongri Piao, Q. Xu, and C. C. Loy, RGB-D salient object detection with cross-modality modulation and selection, ECCV 2020. (CCF-B、清华-A)

[09]Yongri Piao, Z. Rong, M. Zhang, W. Ren, H. Lu, A2dele: Adaptive and attentive depth distiller for efficient RGB-D salient object detection, CVPR 2020. (CCF-A)

[08] M. Zhang, W. Ren,Yongri Piao, Z. Rong, H. Lu, Select, supplement and focus for RGB-D saliency detection, CVPR 2020. (CCF-A)

[07]Yongri Piao, Z. Rong, M. Zhang, H. Lu, Exploit and replace: an asymmetrical two-stream architecture for versatile light field saliency detection, AAAI 2020. (CCF-A)

[06] M. Zhang, W. Ji,Yongri Piao, J. Li, H. Lu, LFNet: Light-field fusion network for salient object detection, IEEE Trans on Image Processing, 29(1): 6276-6287 (2020), IF: 11.041. (CCF-A)(中科院一区)

[05]Yongri Piao, X. Li, M. Zhang, J. Yu, H. Lu, Saliency detection via depth-induced cellular automata on light field, IEEE Trans on Image Processing 29(1):1879-1889 (2020), IF: 11.041. (CCF-A)(中科院一区)

[04] M. Zhang, W. Ji,Yongri Piao, J. Li, H. Lu, Memory-oriented decoder for light field salient object detection, NeurIPS 2019. (CCF-A)

[03]Yongri Piao, W. Ji, J. Li, M. Zhang, H. Lu, Depth-induced multi-scale recurrent attention network for saliency detection, ICCV 2019. (CCF-A)

[02] T. Wang,Yongri Piao, X. Li, L. Zhang, H. Lu, Deep learning for light field saliency detection, ICCV 2019. (CCF-A)

[01]Yongri Piao, Z. Rong, M. Zhang, X. Li, H. Lu, Deep Light-field-driven saliency detection from a single view, IJCAI 2019. (CCF-A)


毕业去向

2022届:字节/腾讯/小米/滴滴

2021届:字节/腾讯/华为/BIGO/TP-Link

2020届:美团/高校

2019届:字节/华为/Fidelity

2018届:一汽大众/京东/招商银行

2017届:华为/SAP/大商所

2016届:北洋电器/索尼

Educational ExperienceMore>>

2005.9 2008.8

  • Pukyong National University
  • Communication and Information Systems
  • Doctoral Degree

2003.9 2005.8

  • Pukyong National University
  • Communication and Information Systems
  • Master's Degree

1999.8 2003.7

  • Jilin University
  • Control Theory and Control Engineering
  • Bachelor's Degree

Work Experience

2012.3 Now
  • Dalian University of Technology
  • Information and Communications Engineering
  • 副教授
2008.9 2011.12
  • 3D Display National Research Center
  • 研究教授

Social Affiliations

  • IEEE/OSA/SPIE 会员
    CCF计算机视觉专委会 委员
    CSIG机器视觉专委会 委员
    IScIDE 2017 专题主席
    VALSE 2017 执行主席

Research FocusMore>>

  • 计算机视觉

  • 模式识别

  • 计算成像

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