Referring Multi-Object Tracking
This work addresses the challenge of multi-object tracking in videos for computer vision applications, introducing a novel task that extends beyond single-object referring tasks.
The paper tackles the problem of tracking multiple objects in videos using language expressions as semantic cues, proposing a new task called referring multi-object tracking (RMOT) and achieving impressive detection performance with a transformer-based architecture.
Existing referring understanding tasks tend to involve the detection of a single text-referred object. In this paper, we propose a new and general referring understanding task, termed referring multi-object tracking (RMOT). Its core idea is to employ a language expression as a semantic cue to guide the prediction of multi-object tracking. To the best of our knowledge, it is the first work to achieve an arbitrary number of referent object predictions in videos. To push forward RMOT, we construct one benchmark with scalable expressions based on KITTI, named Refer-KITTI. Specifically, it provides 18 videos with 818 expressions, and each expression in a video is annotated with an average of 10.7 objects. Further, we develop a transformer-based architecture TransRMOT to tackle the new task in an online manner, which achieves impressive detection performance and outperforms other counterparts. The dataset and code will be available at https://github.com/wudongming97/RMOT.