Applying centroid based adjustment to kernel based object tracking for improving localization

R. Mehmood, Muhammad Usman Ali, I. A. Taj
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引用次数: 10

Abstract

In recent studies kernel based object tracking (KBOT) using Bhattacharya coefficient as similarity measure is shown to be robust and efficient object tracking technique. Image histogram provides a compact summarization of the distribution of data in an image. Due to computational efficiency; histogram has been successfully applied in KBOT based tracking algorithms. However without spatial or shape information, similar objects of different color may be indistinguishable based solely on histogram comparisons. The application of meanshift algorithm (the core of KBOT) on 1-D low level features of histogram may converge to false local maxima and cause inaccuracy of target localization. In this paper we presented a robust and efficient tracking approach using structural features along with histogram based Bhattacharya coefficient similarity measure for tracking non rigid objects. It is proposed that integrating the edge based target information as post processing step for updating estimated mean shift centroid in KBOT improves the localization problem. Experimental results show the updated algorithm has achieve more precise tracking results as compared to original kernel based object tracking
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将基于质心的调整应用于基于核的目标跟踪以提高定位
近年来的研究表明,以Bhattacharya系数为相似性度量的基于核的目标跟踪(KBOT)是一种鲁棒、高效的目标跟踪技术。图像直方图提供了图像中数据分布的简洁摘要。由于计算效率;直方图已成功应用于基于KBOT的跟踪算法中。然而,如果没有空间或形状信息,仅通过直方图比较可能无法区分不同颜色的相似物体。均值移位算法(KBOT的核心)在直方图1-D低阶特征上的应用可能会收敛到虚假的局部极大值,导致目标定位不准确。在本文中,我们提出了一种基于结构特征和基于直方图的Bhattacharya系数相似度量来跟踪非刚性物体的鲁棒高效跟踪方法。提出将基于边缘的目标信息作为后处理步骤,对KBOT中估计的平均偏移质心进行更新,以改善定位问题。实验结果表明,与原始的基于核的目标跟踪相比,改进后的算法获得了更精确的跟踪结果
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