Multirotor UAV state prediction through multi-microphone side-channel fusion

Hendrik Vincent Koops, Kashish Garg, Munsung Kim, Jonathan Li, A. Volk, F. Franchetti
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Abstract

Improving trust in the state of Cyber-Physical Systems becomes increasingly important as more Cyber-Physical Systems tasks become autonomous. Research into the sound of Cyber-Physical Systems has shown that audio side-channel information from a single microphone can be used to accurately model traditional primary state sensor measurements such as speed and gear position. Furthermore, data integration research has shown that information from multiple heterogeneous sources can be integrated to create improved and more reliable data. In this paper, we present a multi-microphone machine learning data fusion approach to accurately predict ascending/hovering/descending states of a multi-rotor UAV in flight. We show that data fusion of multiple audio classifiers predicts these states with accuracies over 94%. Furthermore, we significantly improve the state predictions of single microphones, and outperform several other integration methods. These results add to a growing body of work showing that microphone side-channel approaches can be used in Cyber-Physical Systems to accurately model and improve the assurance of primary sensors measurements.
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多传声器侧信道融合多旋翼无人机状态预测
随着越来越多的信息物理系统任务自主化,提高对信息物理系统状态的信任变得越来越重要。对网络物理系统声音的研究表明,来自单个麦克风的音频侧通道信息可以用来准确地模拟传统的主要状态传感器测量,如速度和齿轮位置。此外,数据集成研究表明,来自多个异构源的信息可以集成在一起,以创建更好、更可靠的数据。本文提出了一种多麦克风机器学习数据融合方法,以准确预测多旋翼无人机在飞行中的上升/悬停/下降状态。我们表明,多个音频分类器的数据融合预测这些状态的准确率超过94%。此外,我们显著改善了单个麦克风的状态预测,并且优于其他几种集成方法。这些结果增加了越来越多的工作,表明麦克风侧通道方法可以用于网络物理系统中,以准确建模并提高主传感器测量的保证。
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