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Mean-Shift Object Tracking with Discrete and Real AdaBoost Techniques

Authors
Baskoro, HendroKim, Jun-SeongKim, Chang-Su
Issue Date
6월-2009
Publisher
WILEY
Keywords
Mean-shift; blob tracking; object tracking; adaptive boosting (AdaBoost); likelihood image
Citation
ETRI JOURNAL, v.31, no.3, pp.282 - 291
Indexed
SCIE
SCOPUS
KCI
Journal Title
ETRI JOURNAL
Volume
31
Number
3
Start Page
282
End Page
291
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/119919
DOI
10.4218/etrij.09.0108.0372
ISSN
1225-6463
Abstract
An online mean-shift object tracking algorithm, which consists of a learning stage and an estimation stage, is proposed in this work. The learning stage selects the features for tracking, and the estimation stage composes a likelihood image and applies the mean shift algorithm to it to track an object The tracking performance depends on the quality of the likelihood image. We propose two schemes to generate and integrate likelihood images: one based on the discrete AdaBoost (DAB) and the other based on the real AdaBoost (RAB). The DAB scheme uses tuned feature values, whereas RAB estimates class probabilities, to select the features and generate the likelihood images. Experiment results show that the proposed algorithm provides more accurate and reliable tracking results than the conventional mean shift tracking algorithms.
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