A general framework for tracking people

C. Hua, Haiyuan Wu, Qian Chen, T. Wada
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引用次数: 14

Abstract

In this paper, we present a clustering-based tracking algorithm for tracking people (e.g. hand, head, eyeball, body). A human body often appears as a concave object or an object with apertures. In this case, many background areas are mixed into the tracking target which are difficult to be removed by modifying the shape of the search area during tracking. This algorithm realizes the robust tracking for such objects by classifying the pixels in the search area into "target" and "non-target" with K-means clustering algorithm that uses both the "positive" and "negative" samples. The contributions of this research are: 1) Using a 5-D feature vector to describe both the geometric feature "(x,y)" and color feature "(Y,U,V)" of an object (or a pixel) uniformly. This description ensures our method to follow both the position and color changes simultaneously during tracking; 2) Using a variable ellipse model: (a) to describe the shape of a non-rigid object (e.g. hand) approximately, (b) to restrict the search area, and (c) to model the surrounding non-target background. This guarantees the stable tracking of objects with various geometric transformations. Through extensive experiments in various environments and conditions, the effectiveness and the efficiency of the proposed algorithm is confirmed
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跟踪人员的一般框架
在本文中,我们提出了一种基于聚类的跟踪算法来跟踪人(如手、头、眼球、身体)。人体通常呈现为凹形物体或有孔洞的物体。在这种情况下,跟踪目标中混入了许多背景区域,在跟踪过程中通过修改搜索区域的形状很难去除。该算法通过同时使用“正”和“负”样本的K-means聚类算法,将搜索区域内的像素划分为“目标”和“非目标”,实现对此类目标的鲁棒跟踪。本研究的贡献在于:1)利用5维特征向量对物体(或像素)的几何特征“(x,y)”和颜色特征“(y,U,V)”进行统一描述。这种描述确保了我们的方法在跟踪过程中同时跟踪位置和颜色的变化;2)使用可变椭圆模型:(a)近似描述非刚性物体(如手)的形状,(b)限制搜索区域,(c)对周围非目标背景进行建模。这保证了对各种几何变换对象的稳定跟踪。通过在各种环境和条件下的大量实验,验证了所提算法的有效性和高效性
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