
所属学科专业:计算机科学与技术、电子信息、控制科学与工程
导师简介:
张凯兵,1975年12月生,男,模式识别与智能系统专业工学博士,信息与通信工程学科博士后,悉尼科技大学访问学者。担任IEEE Signal Processing Letters、Information Sciences、IEEE Transactions on Cybernetics Pattern Recognition、IEEE Trans. on Image Processing等多个国际期刊的审稿人。近5年来,在IEEE TIP、IEEE TNNLS、NeuralNetworks、Neurocomputing、Signal Processing(Elsevier)、Applied Soft Computing、Applied Intelligence、CVPR和ICIP等国际期刊和会议发表论文40余篇,Google Scholar引用3200余次,单篇引用602次,ESI高被引论文5篇。承担国家自然科学基金面项目2项、中国博士后科学基金特等和一等资助各1项、陕西省自然科学基金重点研发计划1项。获陕西省科学技术奖一等奖,教育部高等学校科学研究优秀成果奖二等奖,陕西省高等学校科学技术一等奖。获评2014年度西安电子科技大学优秀博士论文,2018年度ACM西安“新星奖”(排名第一)和ACM中国“新星奖”提名,2019年度“香港桑麻奖教金”, 2019-2020年度西安工程大学“师德先进个人”。曾指导学生获全国大学生软件设计大赛一等奖,第十三届中国研究生电子设计竞赛西北赛区三等奖,第十六届中国研究生电子设计竞赛西北赛区二等奖。在2016年开始指导硕士研究生,其中5名研究生获西安工程大学优秀硕士论文,4名研究生获得研究生创新基金项目,4名研究生获得国家奖学金,3名研究生进入西安交通大学攻读博士研究生。
主要研究方向:影像超分辨重建及质量评价、复杂环境下的计算机视觉检测与分析(弱光图像增强、微小目标检测、运动去模糊)、跨模态人脸合成与识别、智能视频分析与理解、深度学习与模型压缩、跨域自适应迁移学习等。
主持的主要科研项目:
1.基于分治策略与增量字典学习的图像超分辨重建方法研究(国家自然科学基金面上项目, 2020.1—2023.12,经费65万)
2.基于多视角特征集成学习的图像超分辨重建方法(陕西省自然科学基础研究计划重点项目,2018.1—2020.12,经费10万)
3.资源受限环境下实时超分辨重建方法研究(国家自然科学基金面上项目, 2015.1—2018.12,经费81万)
4.基于多线性映射关系学习的实时高质量图像超分辨重建(博士后基金特别资助, 2014.1—2016.6)
5.基于稀疏一致性字典学习超分辨重建方法研究(中国博士后基金一等资助,2014.1—2015.12)
6.基于多视角特征学习的双低油菜缺素智能诊断方法(省自然科学基金, 2016.1—2018.12)
7.多尺度相似性冗余结构学习超分辨重建方法研究(省自然科学基金, 2012.1—2014.12)
8.基于非局部正则化和字典学习超分辨重建方法(省教育厅中青年项目, 2012.1—2013.12)
主要科研成果:
1.层次化超分辨重建方法,2020年度陕西高等学校科学技术奖,一等奖(排序1).
2.基于广义稀疏表示的图像超分辨重建方法,2019年度陕西省电子学会自然科学奖一等奖(排序1).
3.2018年度ACM西安“新星奖”奖(排序1).
4.复杂纺织品缺陷图像分析及产品开发,2018年陕西省科学技术,一等奖(排序8)
5.异构可视媒体的内容分析与可信服务研究,2015年度陕西省科学技术,一等奖(排序9)
6.2014年西安电子科技大学优秀博士论文.
7.临地空间信息栅格网理论与关键技术, 2013年度高等学校科学研究优秀成果奖(科学技术),二等奖(排序7).
8.视频监控序列中基于画像的人脸检索,2011年度陕西省高等学校科学技术奖,二等奖(排序7).
授权专利:
1.一种基于多级字典学习的残差实例回归超分辨重建方法.专利号:2018 1 0320484.6
2.一种基于AdaBoost实例回归的超分辨率重建方法.专利号:2018 1 0320295.9
3.一种基于半监督流形嵌入的人群计数方法.专利号:201911113493.9
4.一种基于主动判别性跨域对齐的低分辨人脸识别方法.专利号:202010465593.4
5.一种基于典型相关分析融合特征的行人再识别方法.专利号:201911114451.7
6.一种基于多流形耦合映射的低分辨人脸识别方法.专利号:201910954656.X
7.一种基于聚类回归的图像超分辨方法.专利号:202010094638.1
8.一种多视觉特征集成的无参考超分辨图像质量评价方法.专利号:202010086336.X
9.基于stacking无参考型超分辨图像质量评价方法.专利号:202010086355.2
10.一种基于Stacking集成学习的图像超分辨方法.专利号:202010052099.5
11.基于级联回归基学习的单帧图像超分辨重建方法.专利号:201810689607.3
12.一种基于耦合判别流形对齐的低分辨人脸识别方法.专利号:202010465414.7
主要期刊论文:
[1]Dongtong Ma(硕士研究生), Kaibing Zhang*, Qizhi Cao, et al. Coordinate Attention Guided Dual-Teacher Adaptive Knowledge Distillation for image classification, Expert Systems With Applications, 2024,250,123892. (SCI:中科院JCR一区Top,IF=8.5 (2023))
[2]Xue Wu(硕士研究生), Kaibing Zhang, Yanting Hu, et al. Multi-scale non-local attention network for image super-resolution, Signal Processing, 2024, 218, 109362. (SCI:中科院JCR一区Top,CCF B类,IF=8.0 (2023))
[3] Youjiang Yu, Kaibing Zhang*(共同一作), Xiaohua Wang, et al.An Adaptive Region Proposal Network with Progressive Attention Propagation for Tiny Person Detection from UAV Images, IEEE Transactions on Circuits and Systems for Video Technology, 2023, doi: 10.1109/TCSVT.2023.3335157. (SCI:中科院JCR一区Top,CCF B类,IF=8.4 (2023))
[4]Kaibing Zhang,Dongdong Zheng, Jie Li, et al. Coupled discriminative manifold alignment for low-resolution face recognition.Pattern Recognition, 2024,147, 110049. (SCI:中科院JCR一区Top,CCF B类,IF=8.0 (2023))
[5]Kaibing Zhang, Cheng Yu(硕士研究生), Jie Li, et al. Multi-branch and Progressive Network for Low-light Image Enhancement. IEEE Transactions on Image Processing, 2023,32:2295-2308. (SCI:中科院JCR一区Top,CCF A类,IF=10.6 (2023))
[6]Qizhi Cao(硕士研究生), Kaibing Zhang*, Xin He, et al.Be An Excellent Student: Review, Preview, and Correction. IEEE Signal Processing Letters, 2023,30, 1722-1725.
[7]Xing Quan(硕士研究生), Kaibing Zhang, Hui Li, et al.TADSRNet: A triple-attention dual-scale residual networkfor super-resolution image quality assessment. Applied Intelligence, 2023,53:26708–26724
[8]Xing Quan(硕士研究生), Kaibing Zhang, Hui Li, et al.Learning cascade regression for super-resolution imagequality assessment. Applied Intelligence, 2023,53:27304–27322
[9]Chenchen Xi(硕士研究生), Kaibing Zhang, Xin He, et al. Soft-edge-guided significant coordinate attention network for scene text image super-resolution. The Visual Computer, 2023.
[10]Li Hui(硕士研究生), Zhang Kaibing*, Niu Zhenxing, Shi Hongyu. C2MT: A Credible and Class-Aware Multi-Task Transformer for SR-IQA. IEEE Signal Processing Letters, 2022, 29: 2662-2666.
[11]Yu Youjiang, Yuan Chen, Zhang Kaibing*(张凯兵), et al. A Lightweight Multi-Branch Network for Low-Light Image Enhancement. Electronics Letters, 2023.
[12]Zhang Ting(硕士研究生), Wang Huake(硕士研究生), Zhang Kaibing*(张凯兵), et al. Deformable channel non‐local network for crowd counting, Electronics Letters, 2023.
[13]Xin He(硕士研究生),Kaibing Zhang, Yuhong Zhang, et al. SECANet: A structure-enhanced attention network with dual-domain contrastive learning for scene text image super-resolution, Electronics Letters, 2023.
[14]Wang T, Luo H, Zhang K*(张凯兵), et al. Salient double reconstruction-based discriminative projective dictionary pair learning for crowd counting. Applied Intelligence, 2023, 53(2):1981-1996.
[15]Tao Wang, Ting Zhang(硕士研究生), Zhang Kaibing*. Context Attention Fusion Network for Crowd Counting. Knowledge-Based Systems, 2023,271:110541. (SCI:中科院JCR一区Top,CCF B类,IF=8.139 (2022))
[16]Yan J, Zhang K*(张凯兵), Lou S, et al. Learning graph-constrained cascade regressors for single image super-resolution. Applied Intelligence, 2022, 52(10): 10867-10884.
[17]Luo H(硕士研究生), Zhang K(张凯兵), Luo S, et al. Locality-Adaptive Structured Dictionary Learning for Cross-Domain Recognition. IEEE Transactions on Circuits and Systems for Video Technology, 2022, 32(4):2425-2440.
[18]Cheng Zhuang(硕士研究生), Minqi Li, Kaibing Zhang*(张凯兵), et al. Multi-Level Landmark-Guided Deep Network for Face Super-Resolution,Neural Networks, 2022,15:276-286. (SCI:中科院JCR二区,IF=8.05 (2020))
[19]Tingyue Zhang(硕士研究生), Kaibing Zhang*(张凯兵), Xiao Cui, et al.Joint channel-spatial attention network for super-resolution image quality assessment, Applied Intelligence, 2022, 52 (15) :17118-17132.
[20]Kaibing Zhang*(张凯兵), Danni Zhu(硕士研究生), Jie Li, et al. Learning stacking regression for no-reference super-resolution image quality assessment, Signal Processing, 178, 2021:107771.(SCI: 000582425200010)
[21]Wei Liu, HuakeWang(硕士研究生), Hao Luo, Kaibing Zhang(张凯兵)*, et al. Pseudo-label growth dictionary pair learning for crowd counting, Applied Intelligence, 2021.(SCI: 000640755200003)
[22]Kaibing Zhang (张凯兵)*, Shuang Luo(硕士研究生), Minqi Li, et al. Learning stacking regressors for single image super-resolution. Applied Intelligence, 2020, 50(12): 4325-4341 (SCI:000550284200001)
[23]Kaibing Zhang(张凯兵)*, Huake Wang H(硕士研究生), Wei Liu, et al. An efficient semi-supervised manifold embedding for crowd counting. Applied Soft Computing, 2020:106634.(SCI: 000582762000057)
[24]Minqi Li, Richard Yida Xu, Jing Xin, Kaibing Zhang*(张凯兵), Junfeng Jing.Fast non-rigid points registration with cluster correspondences projection, Signal Processing, Signal Processing, 2020, 170:324-337. (SCI:000401981800008)
[25]Minqi Li, Xiangjian He, Richard Yida Xu, Kaibing Zhang*(张凯兵), Junfeng Jing. Face hallucination based on cluster consistent dictionary learning, IET Image Processing, 2021, 15,12: 2841-2853.
[26]Kaibing Zhang (张凯兵), Zhen Wang(硕士研究生), Jie Li, et al.Learning recurrent residual regressors for single image super-resolution, Signal Processing, 2019, 154:324-337. (SCI:000401981800008)
[27]Kaibing Zhang (张凯兵), Jie Li, Haijun Wang, Xiuping Liu, and Xinbo Gao*, Learning local dictionaries and similarity structures for single image super-resolution, Signal Processing, 2018, 142: 231–243 (SCI: 000412611900025)
[28]Kaibing Zhang (张凯兵), Dacheng Tao, Xinbo Gao,Xuelong Li, and Jie Li , Coarse-to-fine learning for single image super-resolution,IEEE Transactions Neural Networks and Learning Systems,2017, 28(5):1109-1122. (SCI:000401981800008)
[29]Kaibing Zhang(张凯兵),XinboGao,Jie Li,HongxingXia.Single image super-resolution using regularization of non-local steering kernel regression, Signal Processing, 2016,123: 53-63. (SCI: 000371838800006)
[30]Kaibing Zhang (张凯兵), Dacheng Tao, Xinbo Gao, Xuelong Li, and ZenggangXiong, Learning multiple linear mappings for efficient single image super-resolution, IEEE Transactions on Image Processing,2015, 24(3) 846–861. (SCI:000348458000002)
[31]Kaibing Zhang (张凯兵), Xinbo Gao, Dacheng Tao, and Xuelong Li, Single image super-resolution with multi-scale similarity learning, IEEE Transactions on Neural Networks and Learning Systems,2013, 24(10): 1648-1659. (SCI: 000325981400012, EI: 20134216849774)
[32]Kaibing Zhang (张凯兵), Xinbo Gao, Dacheng Tao, and Xuelong Li, Single image super–resolution with non–local means and steering kernel regression. IEEE Transactions on Image Processing, 2012, 21(11):4544–4556.(SCI:000310140700005, EI:20124415619794)
[33]Kaibing Zhang (张凯兵),Guangwu Mu, Yuan Yuan, Xinbo Gao, and Dacheng Tao, Video superresolution with 3D adaptive normalized convolution, Neurocomputing, 2012, 94:140–151. (SCI:000307087000014, EI: 20122815227441)
[34]Xinbo Gao, Kaibing Zhang (张凯兵),Dacheng Tao, and Xuelong Li, Joint learning for single image super–resolution via a coupled constraint, IEEE Transactions on Image Processing,2012,21,2:2:469–480. (SCI: 000300559700004, EI: 20120514729691)
[35]Xinbo Gao, Kaibing Zhang (张凯兵), Dacheng Tao, and Xuelong Li, Single image super–resolution with sparse neighbor embedding, IEEE Transactions on Image Processing, 2012, 21(7):3194–3205. (SCI: 000305577600007, EI: 20122615154413)
[36]Kaibing Zhang (张凯兵),Xinbo Gao, Xuelong Li, and Dacheng Tao, Partially supervised neighbor embedding for example–based image super–resolution, IEEE Journal of Selected Topics in Signal Processing, 2011, 5:(2): 230–239. (SCI: 000288458100003, EI: 20111313857082)
会议论文:
[1]Ruiqi Tang(硕士研究生), Xuejuan Kang, Kaibing Zhang(张凯兵)*, Minqi Li. Multi-scale Feature Mergence Reinforced Network for Person Re-Identification,IEEE International Conference on Artificial Intelligence and Industrial Design, May 28-30, Guangzhou, China, pp. 109-113, 2021.
[2]Kaibing Zhang, Danni Zhu(硕士研究生), Jie Li, et al. Learning a cascade regression for no-reference super-resolution image quality assessment, Proc. IEEE International Conference on Image Processing (ICIP), Sept. 22-25, pp. 450-453, Taibai, 2019. (EI: 20195207921382)
[3]Kaibing Zhang*, Xinbo Gao, Dacheng Tao, and Xuelong Li,Multi–scale dictionary for single image super–resolution. Proc. Computer Vision and Pattern Recognition (CVPR), Jun.16–21, Rhode Island, USA, pp.1114–1121. 2012. (EI:20124015484215, Acceptance rate= 24%)
[4]Kaibing Zhang*, Xinbo Gao, Dacheng Tao, and Xuelong Li, Image super-resolution via non-local steering kernel regression regularization. Proc. IEEE International Conference on Image Processing (ICIP), Sep.15–18, pp. 943 – 946, Melbourne, Australia, 2013. (EI: 20141117461493)
[5]Guangwu Mu *, Xinbo Gao, Kaibing Zhang (张凯兵), Xuelong Li, and Dacheng Tao, Single image super resolution with high resolution dictionary. Proc. IEEE International Conference on Image Processing (ICIP), Sep.11–14, pp 1141–1144, Brussels, Belguim, 2011. (EI: 20120514729838)
[6]Kaibing Zhang (张凯兵)*, Jun Lu, Handwritten character recognition via sparse representation and multiple classifiers combination. Proc. IEEE International Conference on Information Theory and Information Security (ICITIS), pp. 1139-1142, 2010. ( EI:20110813683711)
[7]Chunman Yan, Kaibing Zhang (张凯兵), Yunping Qi, Image denoising using modifed nonsubsampled Contourlet transform combined with Gaussian scale mixtures model, Proc. International Conference on Intelligence Science and Big Data Engineering (IScIDE), 2015. (EI: 20155301740838)
[8]Kaibing Zhang (张凯兵)*,Hongxing Xia, Haijun Wang, Chunman Yan, Xinbo Gao, Single image super-resolution with one-pass algorithm and local neighbor regression, Proc. International Conference on Communication Technology,2016, 930-935. (EI: 20161502215082)
联系方式:zhangkaibing@xpu.edu.cn; xihua_0169@163.com