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3D Reconstruction of Pedestrian Trajectory with Moving Direction Learning and Optimal Gait Recognition

机译:具有运动方向学习和最佳步态识别的行人轨迹3D重建

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An inertial measurement unit-based pedestrian navigation system that relies on the intelligent learning algorithm is useful for various applications, especially under some severe conditions, such as the tracking of firefighters and miners. Due to the complexity of the indoor environment, signal occlusion problems could lead to the failure of certain positioning methods. In complex environments, such as those involving fire rescue and emergency rescue, the barometric altimeter fails because of the influence of air pressure and temperature. This paper used an optimal gait recognition algorithm to improve the accuracy of gait detection. Then a learning-based moving direction determination method was proposed. With the Kalman filter and a zero-velocity update algorithm, different gaits could be accurately recognized, such as going upstairs, downstairs, and walking flat. According to the recognition results, the position change in the vertical direction could be reasonably corrected. The obtained 3D trajectory involving both horizontal and vertical movements has shown that the accuracy is significantly improved in practical complex environments.
机译:依靠智能学习算法的基于惯性测量单元的行人导航系统可用于各种应用,特别是在某些严酷条件下,例如跟踪消防员和矿工。由于室内环境的复杂性,信号遮挡问题可能导致某些定位方法失败。在复杂的环境中,例如涉及火灾救援和紧急救援的环境中,气压高度计由于气压和温度的影响而失效。本文采用一种最优的步态识别算法来提高步态检测的准确性。然后提出了一种基于学习的运动方向确定方法。使用卡尔曼滤波器和零速度更新算法,可以准确识别不同的步态,例如上楼,下楼和平坦行走。根据识别结果,可以合理地校正垂直方向上的位置变化。所获得的涉及水平和垂直运动的3D轨迹表明,在实际复杂的环境中,精度得到了显着提高。

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