In this report, we present our solution to the challenge provided by the SFI Centre for Machine Learning (ML-Labs) in which the distance between two phones needs to be estimated. It is a modified version of the NIST Too Close For Too Long (TC4TL) Challenge, as the time aspect is excluded. We propose a feature-based approach based on Bluetooth RSSI and IMU sensory data, that outperforms the previous state of the art by a significant margin, reducing the error down to 0.071. We perform an ablation study of our model that reveals interesting insights about the relationship between the distance and the Bluetooth RSSI readings.
翻译:在本报告中,我们提出了解决SFI机器学习中心(ML-Labs)所带来的挑战的办法,即需要估计两部电话之间的距离,这是NIST“太近太长”挑战的修改版,因为时间方面被排除了,我们建议采用基于蓝牙RSSI和IMU感官数据的基于地貌的方法,该方法大大超过以往的先进水平,将差错降为0.071。 我们对模型进行了一项消化研究,揭示了距离和蓝牙RSSI读数之间关系的有趣见解。