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Improved Method of Bluetooth-low-energy-based Location Tracking Using Neural Networks

机译:使用神经网络改进基于蓝牙的位置跟踪方法

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Indoor positioning and tracking technology perform important functions in augmented reality, smart factories, and autonomous driving. The indoor positioning method using a Bluetooth low energy (BLE) beacon has been considered challenging, owing to the deviation of the receiver signal strength indicator (RSSI) value. In this paper, we propose an indoor location tracking method by adding an algorithm to reduce differences between the actual and predicted locations of moving objects. By using synthetic data generated from actual measured values, neural networks were trained and used to predict the location of the beacon. Also, an improved tracking algorithm of moving objects was proposed by considering the angle of rotation relative to the origin. Through the simulation, it was confirmed that the improved tracking results were obtained by applying the proposed tracking algorithm to the locations predicted by neural networks.
机译:室内定位和跟踪技术在增强现实,智能工厂和自主驾驶中执行重要功能。 由于接收器信号强度指示器(RSSI)值的偏差,使用蓝牙低能量(BLE)信标的室内定位方法被认为是具有挑战性的。 在本文中,我们通过添加算法来提出室内位置跟踪方法来减少移动物体的实际和预测位置之间的差异。 通过使用从实际测量值产生的合成数据,培训神经网络并用于预测信标的位置。 此外,通过考虑相对于原点的旋转角度,提出了一种改进的移动物体的跟踪算法。 通过模拟,证实通过将所提出的跟踪算法应用于神经网络预测的位置来获得改进的跟踪结果。

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