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Implementation of Dead Reckoning System Using Fingerprint and K-NN Algorithm for An Object Position and Posture Estimation

机译:基于指纹和K-NN算法的航位推算系统的目标位置和姿态估计

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Limitation of GPS in indoor area become the main problem for indoor localization system. Dead reckoning system usually used inertia sensor or GPS for localization system. Initial location becomes a lack for the dead reckoning system due to the requirement of additional algorithm or additional device. Fingerprint method and K-Nearest Neighbor (K-NN) Algorithm can be applied as a dead reckoning system to estimate object position in the observation area. Posture estimation system is implemented in system by using IMU sensor to provide information that the object is standing, sitting or in laying posture. This paper proposed a system which can estimate the position of an object along with the object's posture. The implementation result shows that the average Mean Square Error (MSE) of proposed system using 3NN is 4.14 meters with 93.5% accuracy. Due to the computation is done in sever, estimation computing only takes time about 0.467 seconds. Object posture estimation shows 91% accuracy in 7 object's position.
机译:GPS在室内区域的局限性成为室内定位系统的主要问题。航位推算系统通常使用惯性传感器或GPS进行定位。由于需要额外的算法或额外的设备,航位推测系统缺少初始位置。指纹方法和K最近邻算法(K-NN)可作为航位推算系统来估计观察区域中的物体位置。姿态估计系统是通过使用IMU传感器在系统中实现的,以提供对象站立,坐着或处于躺着姿势的信息。本文提出了一种可以估计物体位置以及物体姿态的系统。实施结果表明,所提出的系统使用3NN的平均均方误差(MSE)为4.14米,准确度为93.5%。由于计算是在服务器上完成的,因此估计计算仅需要约0.467秒的时间。物体姿态估计在7个物体的位置显示出91%的精度。

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