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arxiv: 1705.10716 · v1 · pith:GXGW4QDSnew · submitted 2017-05-30 · 💻 cs.CV

Addressing Ambiguity in Multi-target Tracking by Hierarchical Strategy

classification 💻 cs.CV
keywords detectionstrackingapproachhierarchicalidentitymulti-targettrackertracklets
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This paper presents a novel hierarchical approach for the simultaneous tracking of multiple targets in a video. We use a network flow approach to link detections in low-level and tracklets in high-level. At each step of the hierarchy, the confidence of candidates is measured by using a new scoring system, ConfRank, that considers the quality and the quantity of its neighborhood. The output of the first stage is a collection of safe tracklets and unlinked high-confidence detections. For each individual detection, we determine if it belongs to an existing or is a new tracklet. We show the effect of our framework to recover missed detections and reduce switch identity. The proposed tracker is referred to as TVOD for multi-target tracking using the visual tracker and generic object detector. We achieve competitive results with lower identity switches on several datasets comparing to state-of-the-art.

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