Address

Room 101, Institute of Cyber-Systems and Control, Yuquan Campus, Zhejiang University, Hangzhou, Zhejiang, China

Contact Information

Email: yenenglin@zju.edu.cn

Yeneng Lin

PhD Student

Institute of Cyber-Systems and Control, Zhejiang University, China

Biography

I am pursuing my Ph.D. degree, in Zhejiang University, supervised by Yong Liu. My research area includes multiple object tracking and object detection.

Research and Interests

  • Multiple Objects Tracking (MOT)
  • Object Detection

Publications

  • Yeneng Lin, Mengmeng Wang, Wenzhou Chen, Wang Gao, Lei Li, and Yong Liu. Multiple Object Tracking of Drone Videos by a Temporal-Association Network with Separated-Tasks Structure. Remote Sensing, 14(16):3862, 2022.
    [BibTeX] [Abstract] [DOI] [PDF]
    The task of multi-object tracking via deep learning methods for UAV videos has become an important research direction. However, with some current multiple object tracking methods, the relationship between object detection and tracking is not well handled, and decisions on how to make good use of temporal information can affect tracking performance as well. To improve the performance of multi-object tracking, this paper proposes an improved multiple object tracking model based on FairMOT. The proposed model contains a structure to separate the detection and ReID heads to decrease the influence between every function head. Additionally, we develop a temporal embedding structure to strengthen the representational ability of the model. By combing the temporal-association structure and separating different function heads, the model’s performance in object detection and tracking tasks is improved, which has been verified on the VisDrone2019 dataset. Compared with the original method, the proposed model improves MOTA by 4.9% and MOTP by 1.2% and has better tracking performance than the models such as SORT and HDHNet on the UAV video dataset.
    @article{lin2022mot,
    title = {Multiple Object Tracking of Drone Videos by a Temporal-Association Network with Separated-Tasks Structure},
    author = {Yeneng Lin and Mengmeng Wang and Wenzhou Chen and Wang Gao and Lei Li and Yong Liu},
    year = 2022,
    journal = {Remote Sensing},
    volume = {14},
    number = {16},
    pages = {3862},
    doi = {10.3390/rs14163862},
    abstract = {The task of multi-object tracking via deep learning methods for UAV videos has become an important research direction. However, with some current multiple object tracking methods,
    the relationship between object detection and tracking is not well handled, and decisions on how to make good use of temporal information can affect tracking performance as well. To improve the performance of multi-object tracking, this paper proposes an improved multiple object tracking model based on FairMOT. The proposed model contains a structure to separate the detection and ReID heads to decrease the influence between every function head. Additionally, we develop a temporal embedding structure to strengthen the representational ability of the model. By combing the temporal-association structure and separating different function heads, the model’s performance in object detection and tracking tasks is improved, which has been verified on the VisDrone2019 dataset. Compared with the original method, the proposed model improves MOTA by 4.9% and MOTP by 1.2% and has better tracking performance than the models such as SORT and HDHNet on the UAV video dataset.}
    }