Abstract

Object tracking is still an intriguing task as the target undergoes significant appearance changes due to illumination, fast motion, occlusion and shape deformation. Background clutter and numerous other environmental factors are other major constraints which remain a riveting challenge to develop a robust and effective tracking algorithm. In the present study, an adaptive Spatio-temporal context (STC)-based algorithm for online tracking is proposed by combining the context-aware formulation, Kalman filter, and adaptive model learning rate. For the enhancement of seminal STC-based tracking performance, different contributions were made in the proposed study. Firstly, a context-aware formulation was incorporated in the STC framework to make it computationally less expensive while achieving better performance. Afterwards, accurate tracking was made by employing the Kalman filter when the target undergoes occlusion. Finally, an adaptive update scheme was incorporated in the model to make it more robust by coping with the changes of the environment. The state of an object in the tracking process depends on the maximum value of the response map between consecutive frames. Then, Kalman filter prediction can be updated as an object position in the next frame. The average difference between consecutive frames is used to update the target model adaptively. Experimental results on image sequences taken from Template Color (TC)-128, OTB2013, and OTB2015 datasets indicate that the proposed algorithm performs better than various algorithms, both qualitatively and quantitatively.

Highlights

  • Visual Object Tracking (VOT) is an active research topic in computer vision and machine learning due to extensive applications in areas including gesture recognition [1], sports analysis [2], visual surveillance [3], medical diagnosis [4], autonomous vehicles [5,6]and radar navigation systems [7,8,9]

  • Generative tracking methods focus on constructing an appearance model for target representation and search regions with high scores as results

  • To verify the performance of the proposed tracker both qualitatively and quantitatively, it is tested on several image sequences with complex conditions such as occlusion, illumination variation, deformation and clutter background

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Summary

Introduction

Visual Object Tracking (VOT) is an active research topic in computer vision and machine learning due to extensive applications in areas including gesture recognition [1], sports analysis [2], visual surveillance [3], medical diagnosis [4], autonomous vehicles [5,6]and radar navigation systems [7,8,9]. Discriminative tracking methods treat object tracking as a classification problem by distinguishing the target from its background. Generative trackers perform better analysis in case of availability of small training data. These trackers only consider object similarity which leads to loss of useful information around the target that might drift the tracker when the target undergoes occlusion or scale variation. Discriminative trackers perform better analysis in the case of large training data These trackers cannot adapt adequately when the appearance of target changes, due to which, tracking is affected when the target changes its shape or size during motion [15]

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