MULTI-VIEW ML OBJECT TRACKING WITH ONLINE LEARNING ON RIEMANNIAN MANIFOLDS BY COMBINING GEOMETRIC CONSTRAINTS
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Abstract
· This paper addresses problem of object tracking in occlusion scenarios, where multiple uncalibrated cameras with overlapping fields of view are used.
· We propose a novel method where tracking is first done independently for each view and then tracking results are mapped between each pair of views to improve the tracking in individual views, under the assumptions that objects are not occluded in all views and move uprightly on a planar ground which may induce a homography relation between each pair of views.
· The tracking results are mapped by jointly exploiting the geometric constraints of homography , epipolar and vertical vanishing point. Main contributions of this paper include: (a) formulate a reference model of multi-view object appearance using region covariance for each view;
· (b) define a likelihood measure based on geodesics on a Riemannian manifold that is consistent with the destination view by mapping both the estimated positions and appearances of tracked object from other views;
· (c) locate object in each individual view based on maximum likelihood criterion from multi-view estimations of object position. Experiments have been conducted on videos from multiple uncalibrated cameras, where targets experience long-term partial or full occlusions. Test results have shown effectiveness of the proposed method in terms of robustness against tracking drifts caused by occlusions
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