TY - GEN
T1 - An Approach for Multi-Object Tracking with Two-Stage Min-Cost Flow
AU - Li, Huining
AU - Jiang, Yalong
AU - Zeng, Xianlin
AU - Li, Feng
AU - Wang, Zhipeng
N1 - Publisher Copyright:
©2023 IEEE.
PY - 2023
Y1 - 2023
N2 - The m1rumum network flow algorithm is widely used in multi-target tracking. However, the majority of the present methods concentrate exclusively on minimizing cost functions whose values may not indicate accurate solutions under occlusions. In this paper, by exploiting the properties of tracklets intersections and low-confidence detections, we develop a two-stage tracking pipeline with an intersection mask that can accurately locate inaccurate tracklets which are corrected in the second stage. Specifically, we employ the minimum network flow algorithm with high-confidence detections as input in the first stage to obtain the candidate tracklets that need correction. Then we leverage the intersection mask to accurately locate the inaccurate parts of candidate tracklets. The second stage utilizes low-confidence detections that may be attributed to occlusions for correcting inaccurate tracklets. This process constructs a graph of nodes in inaccurate tracklets and low-confidence nodes and uses it for the second round of minimum network flow calculation. We perform sufficient experiments on popular MOT benchmark datasets and achieve 78.4 MOTA on the test set of MOT16, 79.2 on MOT17, and 76.4 on MOT20, which shows that the proposed method is effective.
AB - The m1rumum network flow algorithm is widely used in multi-target tracking. However, the majority of the present methods concentrate exclusively on minimizing cost functions whose values may not indicate accurate solutions under occlusions. In this paper, by exploiting the properties of tracklets intersections and low-confidence detections, we develop a two-stage tracking pipeline with an intersection mask that can accurately locate inaccurate tracklets which are corrected in the second stage. Specifically, we employ the minimum network flow algorithm with high-confidence detections as input in the first stage to obtain the candidate tracklets that need correction. Then we leverage the intersection mask to accurately locate the inaccurate parts of candidate tracklets. The second stage utilizes low-confidence detections that may be attributed to occlusions for correcting inaccurate tracklets. This process constructs a graph of nodes in inaccurate tracklets and low-confidence nodes and uses it for the second round of minimum network flow calculation. We perform sufficient experiments on popular MOT benchmark datasets and achieve 78.4 MOTA on the test set of MOT16, 79.2 on MOT17, and 76.4 on MOT20, which shows that the proposed method is effective.
KW - Multi-Object tracking
KW - intersection mask
KW - two-stage tracking pipeline
UR - https://www.scopus.com/pages/publications/85191731556
U2 - 10.1109/HDIS60872.2023.10499573
DO - 10.1109/HDIS60872.2023.10499573
M3 - 会议稿件
AN - SCOPUS:85191731556
T3 - 2023 International Conference on High Performance Big Data and Intelligent Systems, HDIS 2023
SP - 194
EP - 199
BT - 2023 International Conference on High Performance Big Data and Intelligent Systems, HDIS 2023
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 5th International Conference on High Performance Big Data and Intelligent Systems, HDIS 2023
Y2 - 6 December 2023 through 8 December 2023
ER -