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Fusion of 2d and 3d sensor data for articulated body tracking

机译:融合2d和3d传感器数据以进行关节运动跟踪

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In this article, we present an approach for the fusion of 2d and 3d measurements for model-based person tracking, also known as Human Motion Capture. The applied body model is defined geometrically with generalized cylinders, and is set up hierarchically with connecting joints of different types. The joint model can be parameterized to control the degrees of freedom, adhesion and stiffness. This results in an articulated body model with constrained kinematic degrees of freedom. The fusion approach incorporates this model knowledge together with the measurements, and tracks the target body iteratively with an extended Iterative Closest Point (ICP) approach. Generally, the ICP is based on the concept of correspondences between measurements and model, which is normally exploited to incorporate 3d point cloud measurements. The concept has been generalized to represent and incorporate also 2d image space features. Together with the 3D point cloud from a 3d time-of-flight (ToF) camera, arbitrary features, derived from 2D camera images, are used in the fusion algorithm for tracking of the body. This gives complementary information about the tracked body, enabling not only tracking of depth motions but also turning movements of the human body, which is normally a hard problem for markerless human motion capture systems. The resulting tracking system, named VooDoo is used to track humans in a Human-Robot Interaction (HRI) context. We only rely on sensors on board the robot, i.e. the color camera, the ToF camera and a laser range finder. The system runs in realtime (~20 Hz) and is able to robustly track a human in the vicinity of the robot.
机译:在本文中,我们提出了一种将2d和3d测量值融合以进行基于模型的人跟踪的方法,也称为Human Motion Capture。应用的身体模型是用广义圆柱体在几何上定义的,并通过不同类型的连接关节进行分层设置。可以对关节模型进行参数设置,以控制自由度,附着力和刚度。这导致了运动自由度受约束的关节模型。融合方法将这种模型知识与测量结果结合在一起,并使用扩展的迭代最近点(ICP)方法迭代地跟踪目标物体。通常,ICP基于测量和模型之间的对应关系的概念,通常将其用于合并3d点云测量。该概念已被普遍化以表示和合并2d图像空间特征。与来自3D飞行时间(ToF)相机的3D点云一起,从2D相机图像派生的任意特征都在融合算法中用于跟踪人体。这提供了有关被跟踪人体的补充信息,不仅可以跟踪深度运动,还可以跟踪人体的转动运动,这通常是无标记人体运动捕获系统的难题。生成的名为VooDoo的跟踪系统用于在人机交互(HRI)上下文中跟踪人类。我们仅依靠机器人上的传感器,即彩色相机,ToF相机和激光测距仪。该系统可实时运行(约20 Hz),并能够可靠地跟踪机器人附近的人员。

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