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Hybrid Orientation Based Human Limbs Motion Tracking Method

机译:基于混合方向的人肢运动跟踪方法

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摘要

One of the key technologies that lays behind the human–machine interaction and human motion diagnosis is the limbs motion tracking. To make the limbs tracking efficient, it must be able to estimate a precise and unambiguous position of each tracked human joint and resulting body part pose. In recent years, body pose estimation became very popular and broadly available for home users because of easy access to cheap tracking devices. Their robustness can be improved by different tracking modes data fusion. The paper defines the novel approach—orientation based data fusion—instead of dominating in literature position based approach, for two classes of tracking devices: depth sensors (i.e., Microsoft Kinect) and inertial measurement units (IMU). The detailed analysis of their working characteristics allowed to elaborate a new method that let fuse more precisely limbs orientation data from both devices and compensates their imprecisions. The paper presents the series of performed experiments that verified the method’s accuracy. This novel approach allowed to outperform the precision of position-based joints tracking, the methods dominating in the literature, of up to 18%.
机译:人机交互和人体运动诊断背后的关键技术之一是四肢运动跟踪。为了使四肢跟踪有效,它必须能够估计每个被跟踪的人体关节及其所导致的身体部位姿势的精确且明确的位置。近年来,由于易于使用廉价的跟踪设备,因此,姿势估计变得非常流行,并且广泛用于家庭用户。它们的鲁棒性可以通过不同的跟踪模式数据融合来提高。本文针对两类跟踪设备定义了一种新颖的方法-基于方向的数据融合-而不是在基于文献的位置方法中占主导地位的两类跟踪设备:深度传感器(即Microsoft Kinect)和惯性测量单位(IMU)。对它们的工作特性的详细分析使得可以制定一种新方法,该方法可以更精确地融合来自两个设备的肢体方向数据并补偿其不精确性。本文介绍了一系列已执行的实验,这些实验验证了该方法的准确性。这种新颖的方法可以胜过基于位置的关节跟踪(在文献中占主导地位的方法)的精度高达18%。

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