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Human Motion Tracking Using Mean Shift Clustering andDiscrete Cosine Transform

机译:使用平均移位聚类的人体运动跟踪anddiscrete余弦变换

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Human motion tracking is an active area of research in computer vision and machine intelligence. It has many applications in video surveillance and human-computer interface. Most of the existing algorithms track multiple humans in a given image. This paper proposes a detection approach which can track a specific person from a crowded environment. Mean shift clustering algorithm is employed in the difference image to get the candidate cluster which is found to converge within few iterations. The number of clusters and the cluster centers are automatically derived by mode seeking with the mean shift procedure. Discrete cosine transform is applied to each cluster and to the known target to extract features of the clusters and the target. To get the target cluster from a given image, Mahalanobis distance is measured between each transformed candidate cluster and the target. The cluster with the minimum distance is taken as the desired target. Tracking is carried out by updating the cluster parameters over time using the mean shift procedure.
机译:人类运动跟踪是计算机视觉和机器智能研究的活跃领域。它在视频监控和人机界面中有许多应用。大多数现有算法在给定图像中追踪多个人类。本文提出了一种检测方法,可以从拥挤的环境中跟踪特定的人。在差异图像中使用平均移位聚类算法以获取发现在很少的迭代中收敛的候选群集。群集数量和群集中心由使用平均移位程序寻求的模式自动导出。将离散余弦变换应用于每个集群和已知目标以提取群集和目标的特征。为了从给定的图像获取目标群集,在每个变换的候选群集和目标之间测量mahalanobis距离。具有最小距离的群集被视为所需的目标。通过使用均值移位过程更新群集参数来执行跟踪。

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