Datasets
Standard Dataset
MOT result
- Citation Author(s):
- Submitted by:
- Yuan Xiao
- Last updated:
- Mon, 11/04/2024 - 14:34
- DOI:
- 10.21227/w5w1-9n17
- License:
- Categories:
- Keywords:
Abstract
This data is presented to showcase the experimental results related to the experiments conducted in our paper. Our paper introduces a multi-object tracking algorithm, which has been evaluated on the test sets of the MOT17, MOT20, and HiEve datasets.
Joint-Detection-and-Embedding paradigm achieves fast tracking by simultaneously learning detection and Re-ID features. However, it still faces performance degradation in complex scenes and the misalignment between detection and Re-ID features. In this paper, we propose a decoupling module based on channel-wise attention mechanism to obtain task-aligned features served for different demands of detection and Re-ID. To improve the performance of data association, we fuse motion, location, appearance information and perform a two-round matching for high and low confidence detections respectively by the Motion-GIoU matrix and the Embedding-GIoU matrix. Additionally, we apply the camera motion compensation to get a more accurate motion estimation, resulting in a more robust tracking in the scenes of camera motion and low-frame-rate. Extensive experiments show that our proposed method outperforms a wide range of existing methods on the MOTChallenge and HiEvE datasets.
The data consists of images, derived from the official leaderboards of various datasets:
For MOTChallenge, visit https://motchallenge.net/
For HiEve, go to http://humaninevents.org/
Dataset Files
- 屏幕截图 2024-02-15 102407.png (264.77 kB)
- 屏幕截图 2024-02-15 101104.png (310.52 kB)
- 屏幕截图 2024-02-26 161717.png (313.52 kB)