Optimum Correlation filters for Visual Tracking via Histogram of Gradient Features and SVM classifie
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Date
2019-02-24
Journal Title
Journal ISSN
Volume Title
Publisher
Universty of Eloued جامعة الوادي
Abstract
The majority of object trackers algorithms cannot
recover tracking processes from problems of drifting. These
problems are caused by several challenges, especially heavy
occlusion, scale variation, and fast motion. In this paper, we
present a new effective method with the aim of treating these
challenges robustly basing on two principal tasks. First, we infer
the target location using the correlation map, resulting from
the combination of a learned correlation filter model with a
histogram of gradient (HOG) features. Indeed, Bat algorithm
(BA) is exploited for solving the update model equation of the
correlation filters. Second, we use the histogram of gradient
features to learn another correlation filter model in order to
estimate the scale variation. Furthermore, we exploit an online
training SVM classifier to re-detect target in failure cases. The
extensive experiments on a commonly used tracking benchmark
dataset justify that our tracker significantly outperforms the
state-of-the-art trackers.
Description
Intervention
Keywords
HOG, Correlation filter, BA, SVM, Visual track ing.
Citation
Djamel Eddine Touil.Nadjiba TERKI.Riadh AJGOU.Khelil SIDI BRAHIM.Optimum Correlation filters for Visual Tracking via Histogram of Gradient Features and SVM classifie.International Symposium on Technology & Sustainable Industry Development, ISTSID’2019. Faculty Of Technology. University Of Eloued. [Visited in ../../….]. Available from [copy the link here].