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Smartphone Location Recognition: A Deep Learning-Based Approach

机译:智能手机位置识别:一种基于深度学习的方法

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摘要

One of the approaches for indoor positioning using smartphones is pedestrian dead reckoning. There, the user step length is estimated using empirical or biomechanical formulas. Such calculation was shown to be very sensitive to the smartphone location on the user. In addition, knowledge of the smartphone location can also help for direct step-length estimation and heading determination. In a wider point of view, smartphone location recognition is part of human activity recognition employed in many fields and applications, such as health monitoring. In this paper, we propose to use deep learning approaches to classify the smartphone location on the user, while walking, and require robustness in terms of the ability to cope with recordings that differ (in sampling rate, user dynamics, sensor type, and more) from those available in the train dataset. The contributions of the paper are: (1) Definition of the smartphone location recognition framework using accelerometers, gyroscopes, and deep learning; (2) examine the proposed approach on 107 people and 31 h of recorded data obtained from eight different datasets; and (3) enhanced algorithms for using only accelerometers for the classification process. The experimental results show that the smartphone location can be classified with high accuracy using only the smartphone’s accelerometers.
机译:行人航位推算是使用智能手机进行室内定位的方法之一。在那里,使用经验或生物力学公式估算用户步长。事实表明,这种计算对用户在智能手机上的位置非常敏感。另外,智能手机位置的知识也可以帮助直接进行步长估计和航向确定。从更广泛的角度来看,智能手机位置识别是许多领域和应用(例如健康监控)中采用的人类活动识别的一部分。在本文中,我们建议使用深度学习方法对步行时用户在智能手机上的位置进行分类,并且在处理不同记录(采样率,用户动态,传感器类型等)的能力方面要求鲁棒性)中的数据。该论文的贡献是:(1)使用加速度计,陀螺仪和深度学习定义智能手机位置识别框架; (2)研究从8个不同的数据集中获得的107个人和31小时的记录数据的建议方法; (3)增强算法,仅将加速度计用于分类过程。实验结果表明,仅使用智能手机的加速度计就可以对智能手机的位置进行高精度分类。

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