利用机器学习技术优化基于RSSI的室内定位和跟踪,以监控危险工作区域的工人

P. Aravinda, S. Sooriyaarachchi, C. Gamage, N. Kottege
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引用次数: 4

摘要

本文提出了一种基于RSSI的室内混乱环境下的深度神经网络定位与跟踪方法。我们实施了一个实时系统来定位使用可穿戴有源射频标签和射频接收器的人,这些射频标签和射频接收器固定在具有高射频噪声的工业环境中。该解决方案有利于分析存在人体衰减、信号失真和环境噪声的室内杂乱环境下的RSSI数据。在硬件测试平台上的仿真和实验表明,接收机的布置、接收机的数量和接收机捕获的视线信号量是提高定位和跟踪精度的重要参数。射频信号通过携带标签的人衰减的影响与两个神经网络模型相结合,这些神经网络模型是用与两个行走方向相关的RSSI数据训练的。该方法成功地预测了人的行走方向。
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Optimization of RSSI based indoor localization and tracking to monitor workers in a hazardous working zone using Machine Learning techniques
This paper proposes a method for RSSI based indoor localization and tracking in cluttered environments using Deep Neural Networks. We implemented a real-time system to localize people using wearable active RF tags and RF receivers fixed in an industrial environment with high RF noise. The proposed solution is advantageous in analysing RSSI data in cluttered-indoor environments with the presence of human body attenuation, signal distortion, and environmental noise. Simulations and experiments on a hardware testbed demonstrated that receiver arrangement, number of receivers and amount of line of sight signals captured by receivers are important parameters for improving localization and tracking accuracy. The effect of RF signal attenuation through the person who carries the tag was combined with two neural network models trained with RSSI data pertaining to two walking directions. This method was successful in predicting the walking direction of the person.
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