Tracking of Human Body Parts using the Multiocular Contracting Curve Density Algorithm

Markus Hahn, Lars Krüger, C. Wöhler, H. Groß
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引用次数: 12

Abstract

In this contribution we introduce the multiocular contracting curve density algorithm (MOCCD), a novel method for fitting a 3D parametric curve. The MOCCD is integrated into a tracking system and its suitability for tracking human body parts in 3D in front of cluttered background is examined. The developed system can be applied to a variety of body parts, as the object model is replaceable in a simple manner. Based on the example of tracking the human hand-forearm limb it is shown that the use of three MOCCD algorithms with three different kinematic models within the system leads to an accurate and temporally stable tracking. All necessary information is obtained from the images, only a coarse initialisation of the model parameters is required. The investigations are performed on 14 real-world test sequences. These contain movements of different hand-forearm configurations in front of a complex cluttered background. We find that the use of three cameras is essential for an accurate and temporally stable system performance since otherwise the pose estimation and tracking results are strongly affected by the aperture problem. Our best method achieves 95% recognition rate, compared to about 30% for the reference methods of 3D active contours and a curve model tracked by a particle filter. Hence only 5% of the estimated model points exceed a distance of 12 cm with respect to the ground truth, using the proposed method.
基于多眼收缩曲线密度算法的人体部位跟踪
本文介绍了一种新的三维参数曲线拟合方法——多眼收缩曲线密度算法(MOCCD)。将MOCCD集成到跟踪系统中,并对其在杂乱背景下对人体部位进行三维跟踪的适用性进行了检验。所开发的系统可以应用于各种身体部位,因为对象模型可以简单地替换。通过对人的手-前臂肢体的跟踪实例表明,在系统内使用三种不同运动模型的MOCCD算法可以实现准确且时间稳定的跟踪。从图像中获得所有必要的信息,只需要对模型参数进行粗初始化。调查是在14个真实世界的测试序列上进行的。这些实验包含了在复杂杂乱的背景下不同手-前臂构型的运动。我们发现使用三台相机对于准确和暂时稳定的系统性能至关重要,否则姿态估计和跟踪结果会受到孔径问题的强烈影响。我们的最佳方法达到95%的识别率,而3D活动轮廓和粒子滤波跟踪曲线模型的参考方法的识别率约为30%。因此,使用所提出的方法,只有5%的估计模型点相对于地面真实值超过12厘米的距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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