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A SVM-based adaptive stance detection method for pedestrian inertial navigation

机译:基于SVM的行人惯性导航自适应姿态检测方法

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This paper presents a foot-mounted inertial sensor system for pedestrian localization, and aims to find an adaptive stance detection method for pedestrian gait analysis. The approach is based on a Support Vector Machine (SVM) classifier, which divides the gaits into two types: walking and running. For walking, the algorithm uses two threshold conditions and a median filter to detect stance and still phases. For running, a new step detection method based on Extended Kalman Filter (EKF) is used to roughly identify every step of running at first, and then empirical formulas are summarized between the average velocity of each step and thresholds. The corrected thresholds based on empirical formulas are used in the second-round accurate stance detection. The localization accuracy for running is largely improved in this algorithm.
机译:本文提出了一种用于行人定位的脚踏惯性传感器系统,旨在找到一种用于行人步态分析的自适应姿态检测方法。该方法基于支持向量机(SVM)分类器,该分类器将步态分为两种类型:步行和跑步。对于步行,该算法使用两个阈值条件和一个中值滤波器来检测姿态和静止阶段。为了进行跑步,首先使用基于扩展卡尔曼滤波器(EKF)的新步检测方法粗略地识别跑步的每个步骤,然后总结每个步骤的平均速度和阈值之间的经验公式。基于经验公式的校正阈值用于第二轮精确姿态检测。该算法大大提高了运行的定位精度。

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