Learning a Robust Society of Tracking Parts
Elena Burceanu, Marius Leordeanu

TL;DR
This paper introduces a society of tracking parts model that enhances object tracking robustness by managing multiple classifiers as a collaborative system, adapting dynamically to changes and failures for improved accuracy.
Contribution
It presents a novel multi-part tracker system that models parts as a society with dynamic roles, and a closed-form learning method for efficient, robust tracking.
Findings
Achieves state-of-the-art performance on OTB50 dataset.
Demonstrates robustness against background clutter and object appearance changes.
Operates efficiently with a single closed-form formulation.
Abstract
Object tracking is an essential task in computer vision that has been studied since the early days of the field. Being able to follow objects that undergo different transformations in the video sequence, including changes in scale, illumination, shape and occlusions, makes the problem extremely difficult. One of the real challenges is to keep track of the changes in objects appearance and not drift towards the background clutter. Different from previous approaches, we obtain robustness against background with a tracker model that is composed of many different parts. They are classifiers that respond at different scales and locations. The tracker system functions as a society of parts, each having its own role and level of credibility. Reliable classifiers decide the tracker's next move, while newcomers are first monitored before gaining the necessary level of reliability to participate…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Human Pose and Action Recognition · Advanced Image and Video Retrieval Techniques
