Litcius/Paper detail

Track to Detect and Segment: An Online Multi-Object Tracker

Jialian Wu, Jiale Cao, Liangchen Song, Yu Wang, Ming Yang, Junsong Yuan

2021386 citationsDOI

Abstract

Most online multi-object trackers perform object detection stand-alone in a neural net without any input from tracking. In this paper, we present a new online joint detection and tracking model, TraDeS (TRAck to DEtect and Segment), exploiting tracking clues to assist detection end-to-end. TraDeS infers object tracking offset by a cost volume, which is used to propagate previous object features for improving current object detection and segmentation. Effectiveness and superiority of TraDeS are shown on 4 datasets, including MOT (2D tracking), nuScenes (3D tracking), MOTS and Youtube-VIS (instance segmentation tracking). Project page: https://jialianwu.com/projects/TraDeS.html.

Topics & Concepts

Computer scienceArtificial intelligenceBitTorrent trackerComputer visionOffset (computer science)Tracking (education)Video trackingSegmentationObject detectionTrack (disk drive)Object (grammar)Tracking systemEye trackingKalman filterProgramming languageOperating systemPedagogyPsychologyVideo Surveillance and Tracking MethodsHuman Pose and Action RecognitionFace recognition and analysis