Visible to the public Multiple-Human Tracking by Iterative Data Association and Detection Update

TitleMultiple-Human Tracking by Iterative Data Association and Detection Update
Publication TypeJournal Article
Year of Publication2014
AuthorsLu Wang, Yung, N.H.C., Lisheng Xu
JournalIntelligent Transportation Systems, IEEE Transactions on
Volume15
Pagination1886-1899
Date PublishedOct
ISSN1524-9050
KeywordsAccuracy, automated video surveillance, Computational modeling, Data association, data mining, detection responses, detection update, feature extraction, human detection results, intelligent transportation systems, iterative data association, Iterative methods, multiple-human tracking, object tracking, reliability, sensor fusion, Solid modeling, temporal information extraction, Tracking, tracklet association, Trajectory, video surveillance
Abstract

Multiple-object tracking is an important task in automated video surveillance. In this paper, we present a multiple-human-tracking approach that takes the single-frame human detection results as input and associates them to form trajectories while improving the original detection results by making use of reliable temporal information in a closed-loop manner. It works by first forming tracklets, from which reliable temporal information is extracted, and then refining the detection responses inside the tracklets, which also improves the accuracy of tracklets' quantities. After this, local conservative tracklet association is performed and reliable temporal information is propagated across tracklets so that more detection responses can be refined. The global tracklet association is done last to resolve association ambiguities. Experimental results show that the proposed approach improves both the association and detection results. Comparison with several state-of-the-art approaches demonstrates the effectiveness of the proposed approach.

URLhttps://ieeexplore.ieee.org/document/6750747/
DOI10.1109/TITS.2014.2303196
Citation Key6750747