GPS and IMU Fusion for Human Gait Estimation

J. J. Steckenrider, Brock Crawford, Penny Zheng
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引用次数: 2

Abstract

This paper proposes a framework for fusing information coming from an independent inertial measurement unit (IMU) and global positioning system (GPS) to deliver robust estimation of human gait. Because these two sensors provide very different kinds of data at different scales and frequencies, a novel approach which fuses global trajectory estimates and back-propagates this information to correct step vectors is put forth here. In several high-fidelity simulations, the proposed technique is shown to improve step estimation error up to 40% in comparison with an IMU-only approach. This work has implications for not only in-the-field biomechanics research, but also cooperative field robotic systems where it may be critical to accurately monitor a person’s position and state in real-time.
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GPS和IMU融合用于人体步态估计
本文提出了一种融合独立惯性测量单元(IMU)和全球定位系统(GPS)信息的框架,以实现对人体步态的鲁棒估计。由于这两种传感器在不同的尺度和频率下提供了非常不同的数据,因此提出了一种融合全局轨迹估计并反向传播该信息以校正阶跃向量的新方法。在一些高保真仿真中,与仅使用imu的方法相比,所提出的技术可将步长估计误差提高40%。这项工作不仅对现场生物力学研究有意义,而且对协作式现场机器人系统也有意义,在这些系统中,准确实时监测人的位置和状态可能至关重要。
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