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个人简介

陈杰 副教授 陈杰博士近年来致力于深度学习,计算机视觉和模式识别,以及医学图像分析等相关研究。他发表/录用了一系列的高水平文章,包括IJCV(2018年影响因子11.5,是人工智能领域影响因子最高的刊物);TPAMI(2018年影响因子9.5,人工智能领域影响因子最高的刊物之一); TIP,PR,TMM,TSMC,CVPR(其中一篇被录用为Oral,录取比率1.72%)等,单篇文章的最高引用达到了840余次,根据WOS Core统计,该文章成为2010-2014年共5年中所有人工智能领域内引用国际排名第56位。 陈杰博士还积极参与国际学术活动,比如他现在是国际期刊The journal of Visual Computer的Associate Editor,是许多国际顶级期刊和顶级会议的审稿人(例如IJCV,TPAMI,TNNLS,TIP,PR,TIFTS,CVPR,ICCV,MICCAI,IJCAI等)。他还积极组织国际顶级会议的研讨会(workshop),例如(ICCV,CVPR和ACCV);积极组织国际顶级期刊的特刊,例如IJCV,TPAMI和Neurocomputing。 陈杰博士2007年-2018年在芬兰奥卢大学工作(Matti Pietikainen教授,IEEE Fellow)。2012年访问了美国马里兰大学(Rama Chellappa教授,IEEE Fellow),2015年访问了美国杜克大学(Guillermo Sapiro 教授)。 近年承担及参与的主要科研项目: 深圳市政府资助,医学大数据库收集与医学图像分析,2018/6/1-2019/12/31 国家自然科学基金, 61671427, 弱监督视觉目标检测, 2017/1/1—2020/12/31 University of Oulu, Finland, Heart ratio measurement from VIS lighting conditions, 2015/3/1-2015/4/31 国家自然科学基金, 61271433, 多视角多姿态人体目标检测, 2013/1/1-2016/12/31 University of Oulu, Finland, Local descriptor for face recognition, 2012/9/1-2012/11/31 Academy of Finland, Affective human-robot interaction, 01/2009 - 12/2018 Finland Tekes, Joint Research in Face Analysis and Visual Surveillance (JointFavis), 04/2008 - 03/2010 Academy of Finland, Texture analysis in machine vision, 09/2007- 12/2018 授课 深度学习及其应用, University of Oulu, Finland, 2018. 深度学习及其应用, University of Oulu, Finland, 2017. 深度学习及其应用, University of Oulu, Finland, 2015. 计算机图形学,University of Oulu, Finland, 2010-2016 (助教,部分内容教学) 学术荣誉 中国第一届生物测定学竞赛(BVC2004)人脸验证竞赛第一名 IAPR ICB 2006 人脸验证竞赛第一名,该竞赛由英国University of Surrey的Josef Kittler 组织。 2005年国家科技进步二等奖,获奖项目:人脸识别理论、技术、系统及其应用 2015年国家科技进步二等奖,获奖项目:视觉模式的局部建模及非线性特征获取理论与方法研究 对计划招收的硕士和博士研究生的基本要求: 1. 专业范围:计算机科学技术、电子工程、通信、自动控制、应用数学、物理、医学等专业本硕毕业生。 2. 研究/开发能力:具有合作精神,探索能力和创新精神,愿意按较高标准严格要求自己。

研究领域

1、深度学习; 2、计算机视觉与模式识别; 3、医学图像分析。

近期论文

查看导师新发文章 (温馨提示:请注意重名现象,建议点开原文通过作者单位确认)

(a)目标检测与分割 1. J. Chen, S. Shan, C. He, G. Zhao, M. Pietikäinen, X. Chen, and W. Gao. WLD: A Robust Local Image Descriptor. IEEE Trans. on Pattern Analysis and Machine Intelligence. 32(9):1705-1720, 2010 (SCI: 9.5)(引用排名在AI领域从2010到2014的五年内的所有文献中排名第56,数据是基于WoS Core的统计)(TPAMI)(国际顶级期刊)(引用846次) 2. J. Chen, G. Zhao, M. Salo, E. Rahtu, and M. Pietikäinen, Automatic Dynamic Texture Segmentation Using Local Descriptors and Optical Flow, IEEE Trans. on Image Processing, 2013 (58 citations by Google Scholar) (SCI: 5.1) (TIP)(国际顶级期刊) 3. J. Chen, X. Chen, J. Yang, S. Shan, R. Wang, and W. Gao, Optimization of a training set for more robust face detection, Pattern recognition, 41(11):2828-2840, 2009 (29 citations by Google Scholar) (SCI: 4.0) (PR) (国际顶级期刊) 4. J. Chen, R. Wang, S. Yan, S. Shan, X. Chen, and W. Gao. Enhancing Human Face Detection by Resampling Examples through Manifolds. IEEE Trans. on System Man, and Cybernetics. 37(6):1017-1028, 2007.11 (39 citations by Google Scholar) (SCI: 5.1) (TSMC) (国际顶级期刊) 5. J. Chen, S. Shan, G. Zhao, X. Chen, W. Gao, and M. Pietikäinen. A Robust Descriptor based on Weber's Law. IEEE International Conference on Computer Vision and Pattern Recognition, CVPR 2008 (62 citations by Google Scholar) (CVPR) (国际顶级会议) 6. Q. Liu, X. Hong, B. Zou, J. Chen, Z. Chen, Hierarchical Contour Closure based Holistic Salient Object Detection, IEEE Transactions on Image Processing, 2017 (SCI: 5.1) (TIP) (国际顶级期刊) 7. Y. Xu, X. Hong, J. Chen, X. Liu, F. Porikli, G. Zhao, Saliency Integration: An Arbitrator Model, IEEE Transactions on Multimedia, 2019 (SCI: 4.0)(TMM)(国际顶级期刊) 8. S. Yan, S. Shan, X. Chen, W. Gao, and J. Chen. Matrix-Structural Learning (MSL) of Cascaded Classifier from Enormous Training Set. IEEE International Conference on Computer Vision and Pattern Recognition, 2007 (40 citations by Google Scholar) (CVPR) (国际顶级会议) 9. Q. Ye, T. Zhang, Q. Qiu, B. Zhang, J. Chen, and G. Sapiro, Self-learning Scene-specific Pedestrian Detectors using a Progressive Latent Model, IEEE International Conference on Computer Vision and Pattern Recognition, 2017 (CVPR) (国际顶级会议) (b)对近期最具有代表性的特征与基于深度卷积网络的特征表达方法进行了详尽的性能评估,并对过去20年内特征表示方法进行了全面综述 1. L. Liu, J. Chen, P. Fieguth, G. Zhao, R. Chellappa, M. Pietikainen, From BoW to CNN: Two Decades of Texture Representation for Texture Classification, International Journal of Computer Vision 2019 (IJCV) (SCI: 11.5) (c)基于深度卷积神经网络(Convolutional Neural Network, CNN)的特征学习与表达 1. L. Liu, J. Chen, G. Zhao, P. Fieguth, X. Chen, M. Pietikäinen, Texture Classification in Extreme Scale Variations using GANet, IEEE Trans. Image Processing, (Accepted) 2. W. Ke, J. Chen, J. Jiao, G. Zhao, Q. Ye, SRN: Side-output Residual Network for Object Symmetry Detection in the Wild, IEEE International Conference on Computer Vision and Pattern Recognition, 2017 (Oral, 1.72% 录用率) (CVPR) (国际顶级会议) 3. X. Zhang, L. Liu, Y. Xie, J. Chen, L. Wu, M. Pietikäinen, Rotation Invariant Local Binary Convolution Neural Networks, International Conference on Computer Vision Workshop, 2017. (d)模式识别 1. J. Chen, D. Yi, J. Yang, G. Zhao, S. Li, and M. Pietikäinen, Learning Mappings for Face Synthesis from Near Infrared to Visual Light Images, IEEE International Conference on Computer Vision and Pattern Recognition, 2009 (78 citations by Google Scholar, Google 统计计算机视觉&模式识别领域影响力最高的刊物) (CVPR) (国际顶级期刊) 2. J. Chen, V. Kellokumpu, G. Zhao, M. Pietikäinen, RLBP: robust local binary pattern, British machine vision conference, 2013 (69 citations by Google Scholar) (BMVC) (国际顶级会议) 3. R. Wang, S. Shan, X. Chen, J. Chen, and W. Gao. Maximal Linear Embedding for Dimensionality Reduction. IEEE Trans. on Pattern Analysis and Machine Intelligence. 33(9):1776-1792, 2011 (63 citations by Google Scholar) (SCI: 9.5) (TPAMI)(国际顶级期刊) 4. S. Xie, S. Shan, X. Chen, and J. Chen, Fusing Local Patterns of Gabor Magnitude and Phase for Face Recognition, IEEE Trans. on Image Processing, 19(5), pp: 1349-1361, 2010, (373 citations by Google Scholar) (SCI: 5.1) (引用排名在AI领域从2010到2014五年内的所有文献中排名第225,数据是基于WoS Core的统计)(TIP) (国际顶级期刊) (e)计算机视觉/模式识别算法在医学领域中的应用 1. X. Qi, G. Zhao, J. Chen, M. Pietikäinen, Exploring Illumination Robust Descriptors for Human Epithelial Type 2 Cell Classification, Pattern Recognition, 2016 (SCI: 4.0) (PR) (国际顶级期刊) 2. X. Li, J. Chen, G. Zhao and M. Pietikäinen, Remote heart rate measurement from face videos under realistic situations. IEEE International Conference on Computer Vision and Pattern Recognition, 2014. (171 citations by Google Scholar) (CVPR) (国际顶级会议) 3. J. Chen, X. Qi, O. Tervonen, O. Silven, G. Zhao, and M. Pietikäinen, “Thorax disease diagnosis using deep convolutional neural network,” in EMBC, 2016, pp. 2287–2290. (f)国际顶级刊物专刊 1. M. Pietikainen, L. Liu, J. Chen, X. Wang, G. Zhao, R. Chellappa, Compact and Efficient Feature Representation and Learning in Computer Vision, Editorial for a special issue on IEEE Trans. on Pattern Analysis and Machine Intelligence, 2018 (SCI: 9.5) (TPAMI) 2. M. Pietikäinen, L. Liu, J. Qin, J. Chen, W. Ouyang, L. V. Gool, Efficient Visual Recognition, Editorial for a special Issue of International Journal of Computer Vision, 2019 (accepted) (SCI: 11.5,人工智能领域影响因子最高的期刊) (IJCV)

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