JOURNAL ARTICLE

Adaptive appearance learning for visual object tracking

Abstract

This paper addresses online learning of reference object distribution in the context of two hybrid tracking schemes that combine the mean shift with local point feature correspondences, and the mean shift under the Bayesian framework, respectively. The reference object distribution is built up by a kernel-weighted color histogram. The main contributions of the proposed schemes includes: (a) an adaptive learning strategy that seeks to update the reference object distribution when the changes are caused by the intrinsic object dynamic without partial occlusion/ intersection; (b) novel dynamic maintenance of object feature points by exploring both foreground and background sets; (c) integration of adaptive appearance and local point features in joint object appearance similarity and local point features correspondences-based tracker to improve [7]; (d) integration of adaptive appearance in jointappearance similarity and particle filter tracker under theBayesian framework to improve [10]. Experimental results on a range of videos captured by a dynamic/stationary camerademonstrate the effectiveness of the proposed schemes in terms of robustness to partial occlusions, tracking drifts and tightness and accuracy of tracked bounding box. Comparisons are also made with the two hybrid trackers together with 3 existing trackers.

Keywords:
Artificial intelligence Computer vision Computer science Video tracking Minimum bounding box BitTorrent tracker Particle filter Robustness (evolution) Histogram Active appearance model Eye tracking Point distribution model Feature (linguistics) Pattern recognition (psychology) Object detection Object (grammar) Kalman filter Image (mathematics)

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0.17
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Topics

Video Surveillance and Tracking Methods
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Advanced Vision and Imaging
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
Video Analysis and Summarization
Physical Sciences →  Computer Science →  Computer Vision and Pattern Recognition
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