Volume 30 Issue 2
Apr.  2021
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LI Youjiao, ZHUO Li, LI Jiafeng, ZHANG Jing. A Hierarchical Scheme for Video-Based Person Re-identification Using Lightweight PCANet and Handcrafted LOMO Features[J]. Chinese Journal of Electronics, 2021, 30(2): 289-295. doi: 10.1049/cje.2021.02.001
Citation: LI Youjiao, ZHUO Li, LI Jiafeng, ZHANG Jing. A Hierarchical Scheme for Video-Based Person Re-identification Using Lightweight PCANet and Handcrafted LOMO Features[J]. Chinese Journal of Electronics, 2021, 30(2): 289-295. doi: 10.1049/cje.2021.02.001

A Hierarchical Scheme for Video-Based Person Re-identification Using Lightweight PCANet and Handcrafted LOMO Features

doi: 10.1049/cje.2021.02.001
Funds:

the National Natural Science Foundation of China 61531006

the National Natural Science Foundation of China 61602018

the National Natural Science Foundation of China 61701011

Beijing Municipal Natural Science Foundation Cooperation Beijing Education Committee 201910005007

Beijing Municipal Natural Science Foundation Cooperation Beijing Education Committee KZ201810005002

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  • Author Bio:

    LI Youjiao   is a Ph., D. candidate at the Faculty of Information Technology, Beijing University of Technology. He is now a lecturer of Shandong University of Technology. His research interest covers computer vision and deep learning. (Email: liyoujiao@emails.bjut.edu.cn)

    LI Jiafeng   is a assistant professor at Signal & Information Processing Laboratory, Beijing University of Technology. He was in the Department of Neurosurgery, University of Pittsburgh as a visiting scholar from 2014 to 2015. His research interest covers computer vision, image enhancement, and image restoration. (Email: lijiafeng@bjut.edu.cn)

    ZHANG Jing  received her Ph.D. degree from Beijing University of Technology in 2008. She is a professor at the Beijing University of Technology. She is also a research scholar in the Department of Computer Science, the University of Texas at San Antonio. She is the author of more than 50 journal papers and has written three book chapters. Her current research interests include image processing, image recognition, and image retrieval. (Email: zhj@bjut.edu.cn)

  • Corresponding author: ZHUO Li   (corresponding author) is a professor at Beijing University of Technology. She received her bachelor degree in radio technology from the University of Electronic Science and Technology in 1992, master degree in signal & information processing from the Southeast University in 1998, and Ph.D. degree in pattern recognition and intellectual system from Beijing University of Technology in 2004. Her research interest covers image/video coding and transmission, multimedia content analysis, and multimedia information security. Corresponding author of this paper. (Email: zhuoli@bjut.edu.cn)
  • Received Date: 2019-06-19
  • Accepted Date: 2019-08-01
  • Publish Date: 2021-03-01
  • A two-level hierarchical scheme for videobased person re-identification (re-id) is presented, with the aim of learning a pedestrian appearance model through more complete walking cycle extraction. Specifically, given a video with consecutive frames, the objective of the first level is to detect the key frame with lightweight Convolutional neural network (CNN) of PCANet to reflect the summary of the video content. At the second level, on the basis of the detected key frame, the pedestrian walking cycle is extracted from the long video sequence. Moreover, local features of Local maximal occurrence (LOMO) of the walking cycle are extracted to represent the pedestrian' s appearance information. In contrast to the existing walking-cycle-based person re-id approaches, the proposed scheme relaxes the limit on step number for a walking cycle, thus making it flexible and less affected by noisy frames. Experiments are conducted on two benchmark datasets: PRID 2011 and iLIDS-VID. The experimental results demonstrate that our proposed scheme outperforms the six state-of-art video-based re-id methods, and is more robust to the severe video noises and variations in pose, lighting, and camera viewpoint.
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