Mobile indoor location based on fractional differentiation

M. Dakkak, A. Nakib, B. Daachi, P. Siarry, J. Lemoine
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引用次数: 4

Abstract

While the static indoor location of a mobile terminal (MT) has been extensively studied on last decade, the prediction of the trajectory of a MT still is the major problem for building mobile location (tracking) systems (TSs). This problem is solved for outdoor TSs using global positioning system (GPS), however, it remains an essential obstacle to construct reliable indoor TSs. Different approaches were proposed in the literature, the most used is that based on prediction filters, such as linear filters (LF), Kalman filters (KF) and particle filters (PF). In this paper, we propose to enhance the performance of the predictors using digital fractional differentiation (DFD) to predict a MT trajectory. To illustrate the obtained results, three indoor trajectory scenarios inspired from real daily promenades are simulated (museum visit, hospital doctor walking and shopping in the market). Experimental results show a significant improvement of the performance of the classical predictors, particularly in noisy cases.
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基于分数微分的移动室内定位
尽管近十年来人们对移动终端的室内静态定位进行了广泛的研究,但移动终端的运动轨迹预测仍然是构建移动定位(跟踪)系统的主要问题。利用全球定位系统(GPS)解决了室外TSs的这一问题,但它仍然是构建可靠的室内TSs的主要障碍。文献中提出了不同的方法,其中使用最多的是基于预测滤波器的方法,如线性滤波器(LF)、卡尔曼滤波器(KF)和粒子滤波器(PF)。在本文中,我们建议使用数字分数微分(DFD)来提高预测器的性能,以预测MT轨迹。为了说明所获得的结果,模拟了三个室内轨迹场景,这些场景的灵感来自于真实的日常散步(博物馆参观,医院医生散步和市场购物)。实验结果表明,经典预测器的性能有了显著提高,特别是在有噪声的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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