DocumentCode :
65225
Title :
Multi-View ML Object Tracking With Online Learning on Riemannian Manifolds by Combining Geometric Constraints
Author :
Yixiao Yun ; Gu, I. Y. -H. ; Aghajan, Hamid
Author_Institution :
Dept. of Signals & Syst., Chalmers Univ. of Technol., Gothenburg, Sweden
Volume :
3
Issue :
2
fYear :
2013
fDate :
Jun-13
Firstpage :
185
Lastpage :
197
Abstract :
This paper addresses issues in object tracking with occlusion scenarios, where multiple uncalibrated cameras with overlapping fields of view are exploited. We propose a novel method where tracking is first done independently in each individual view and then tracking results are mapped from different views to improve the tracking jointly. The proposed tracker uses the assumptions that objects are visible in at least one view and move uprightly on a common planar ground that may induce a homography relation between views. A method for online learning of object appearances on Riemannian manifolds is also introduced. The main novelties of the paper include: 1) define a similarity measure, based on geodesics between a candidate object and a set of mapped references from multiple views on a Riemannian manifold; 2) propose multi-view maximum likelihood estimation of object bounding box parameters, based on Gaussian-distributed geodesics on the manifold; 3) introduce online learning of object appearances on the manifold, taking into account of possible occlusions; 4) utilize projective transformations for objects between views, where parameters are estimated from warped vertical axis by combining planar homography, epipolar geometry, and vertical vanishing point; 5) embed single-view trackers in a three-layer multi-view tracking scheme. Experiments have been conducted on videos from multiple uncalibrated cameras, where objects contain long-term partial/full occlusions, or frequent intersections. Comparisons have been made with three existing methods, where the performance is evaluated both qualitatively and quantitatively. Results have shown the effectiveness of the proposed method in terms of robustness against tracking drift caused by occlusions.
Keywords :
Gaussian distribution; cameras; differential geometry; learning (artificial intelligence); maximum likelihood estimation; object tracking; video signal processing; Gaussian-distributed geodesics; Riemannian manifold; epipolar geometry; geometric constraint; homography relation; multiview ML object tracking; multiview maximum likelihood estimation; object appearance; object bounding box parameter; object mapping; occlusion scenario; online learning; overlapping fields of view; parameter estimation; planar homography; similarity measure; single-view tracker; three-layer multiview tracking scheme; uncalibrated camera; vertical vanishing point; video; Covariance tracking; Riemannian manifold; epipolar geometry; maximum likelihood (ML); multiple cameras; multiple view geometry; online learning; particle filters; planar homography; visual object tracking;
fLanguage :
English
Journal_Title :
Emerging and Selected Topics in Circuits and Systems, IEEE Journal on
Publisher :
ieee
ISSN :
2156-3357
Type :
jour
DOI :
10.1109/JETCAS.2013.2256814
Filename :
6516988
Link To Document :
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