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Improved Position Accuracy of Foot-Mounted Inertial Sensor by Discrete Corrections from Vision-Based Fiducial Marker Tracking

机译:基于视觉基于基于视觉的基于基于基于视觉的基于基于视觉的基于基于视觉的惯性传感器的位置精度

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摘要

In this paper, we present a novel pedestrian indoor positioning system that uses sensor fusion between a foot-mounted inertial measurement unit (IMU) and a vision-based fiducial marker tracking system. The goal is to provide an after-action review for first responders during training exercises. The main contribution of this work comes from the observation that different walking types (e.g., forward walking, sideways walking, backward walking) lead to different levels of position and heading error. Our approach takes this into account when accumulating the error, thereby leading to more-accurate estimations. Through experimentation, we show the variation in error accumulation and the improvement in accuracy alter when and how often to activate the camera tracking system, leading to better balance between accuracy and power consumption overall. The IMU and vision-based systems are loosely coupled using an extended Kalman filter (EKF) to ensure accurate and unobstructed positioning computation. The motion model of the EKF is derived from the foot-mounted IMU data and the measurement model from the vision system. Existing indoor positioning systems for training exercises require extensive active infrastructure installation, which is not viable for exercises taking place in a remote area. With the use of passive infrastructure (i.e., fiducial markers), the positioning system can accurately track user position over a longer duration of time and can be easily integrated into the environment. We evaluated our system on an indoor trajectory of 250 m. Results show that even with discrete corrections, near a meter level of accuracy can be achieved. Our proposed system attains the positioning accuracy of 0.55 m for a forward walk, 1.05 m for a backward walk, and 1.68 m for a sideways walk with a 90% confidence level.
机译:在本文中,我们提出了一个新颖的行人室内定位系统,该系统使用传感器之间的融合一个脚部安装惯性测量单元(IMU)和基于视觉的基准标记的跟踪系统。目标是在培训练习期间为第一个受访者提供一个后续行动审查。这项工作的主要贡献来自不同的步行类型(例如,前进,侧向行走,落后的行走)导致不同程度的位置和前线误差。我们的方法在累积错误时考虑到这一点,从而导致更准确的估计。通过实验,我们展示了误差累积的变化和准确性的提高改变了何时以及激活相机跟踪系统的速度,导致精度和功耗整体之间的平衡更好。基于IMU和基于视觉的系统使用扩展的卡尔曼滤波器(EKF)松散地耦合,以确保准确和无阻碍的定位计算。 EKF的运动模型来自脚踏式的IMU数据和来自视觉系统的测量模型。用于培训练习的现有室内定位系统需要广泛的主动基础设施安装,对于偏远地区发生的练习不可行。通过使用被动基础设施(即,基准标记),定位系统可以在较长时间内准确地跟踪用户位置,并且可以容易地集成到环境中。我们在250米的室内轨迹上评估了我们的系统。结果表明,即使采用离散校正,也可以实现接近仪表的准确度。我们所提出的系统达到前进步道0.55米的定位精度,落后步行1.05米,横向步行1.68米,距离达到90%的置信水平。

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