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Mean shift tracker combined with online learning-based detector and Kalman filtering for real-time tracking

机译:均值漂移跟踪器结合基于在线学习的检测器和卡尔曼滤波进行实时跟踪

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摘要

Color-based visual object tracking is one of the most commonly used tracking methods. Among many tracking methods, the mean shift tracker is used most often because it is simple to implement and consumes less computational time. However, mean shift trackers exhibit several limitations when used for long-term tracking. In challenging conditions that include occlusions, pose variations, scale changes, and illumination changes, the mean shift tracker does not work well. In this paper, an improved tracking algorithm based on a mean shift tracker is proposed to overcome the weaknesses of existing methods based on mean shift tracker. The main contributions of this paper are to integrate mean shift tracker with an online learning-based detector and to newly define the Kalman filter-based validation region for reducing computational burden of the detector. We combine the mean shift tracker with the online learning-based detector, and integrate the Kalman filter to develop a novel tracking algorithm. The proposed algorithm can reinitialize the target when it converges to a local minima and it can cope with scale changes, occlusions and appearance changes by using the online learning-based detector. It updates the target model for the tracker in order to ensure long-term tracking. Moreover, the validation region obtained by using the Kalman filter and the Mahalanobis distance is used in order to operate detector in real-time. Through a comparison against various mean shift tracker-based methods and other state-of-the-art methods on eight challenging video sequences, we demonstrate that the proposed algorithm is efficient and superior in terms of accuracy and speed. Hence, it is expected that the proposed method can be applied to various applications which need to detect and track an object in real-time. (C) 2017 Elsevier Ltd. All rights reserved.
机译:基于颜色的视觉对象跟踪是最常用的跟踪方法之一。在许多跟踪方法中,平均移位跟踪器是最常用的,因为它易于实现且消耗较少的计算时间。但是,平均移位跟踪器在用于长期跟踪时会表现出一些局限性。在包括遮挡,姿势变化,比例变化和照明变化等挑战性条件下,均值漂移跟踪器无法正常工作。本文提出了一种基于均值漂移跟踪器的改进跟踪算法,以克服现有基于均值漂移跟踪器的跟踪方法的不足。本文的主要贡献是将均值漂移跟踪器与基于在线学习的检测器集成在一起,并新定义了基于卡尔曼滤波器的验证区域,以减轻检测器的计算负担。我们将均值漂移跟踪器与基于在线学习的检测器相结合,并集成卡尔曼滤波器以开发一种新颖的跟踪算法。所提出的算法可以收敛到局部极小值时重新初始化目标,并且可以使用基于在线学习的检测器来应对尺度变化,遮挡和外观变化。它更新了跟踪器的目标模型,以确保长期跟踪。此外,使用通过卡尔曼滤波器和马氏距离获得的验证区域,以便实时操作检测器。通过在8个具有挑战性的视频序列上与各种基于均值漂移跟踪器的方法和其他最新方法进行比较,我们证明了该算法在准确性和速度方面都是高效且优越的。因此,期望所提出的方法可以应用于需要实时检测和跟踪物体的各种应用。 (C)2017 Elsevier Ltd.保留所有权利。

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