Feasibility of discriminating UAV propellers noise from distress signals to locate people in enclosed environments using MEMS microphone arrays - Robotics Institute Carnegie Mellon University

Feasibility of discriminating UAV propellers noise from distress signals to locate people in enclosed environments using MEMS microphone arrays

Alberto Izquierdo, Lara Del Val, Juan J. Villacorta, Weikun Zhen, Sebastian Scherer, and Zheng Fang
Journal Article, Sensors: Special Issue - Sensors for Unmanned Aircraft Systems and Related Technologies, Vol. 20, No. 3, pp. 597, February, 2020

Abstract

Detecting and finding people are complex tasks when visibility is reduced. This happens, for example, if a fire occurs. In these situations, heat sources and large amounts of smoke are generated. Under these circumstances, locating survivors using thermal or conventional cameras is not possible and it is necessary to use alternative techniques. The challenge of this work was to analyze if it is feasible the integration of an acoustic camera, developed at the University of Valladolid, on an unmanned aerial vehicle (UAV) to locate, by sound, people who are calling for help, in enclosed environments with reduced visibility. The acoustic array, based on MEMS (micro-electro-mechanical system) microphones, locates acoustic sources in space, and the UAV navigates autonomously by closed enclosures. This paper presents the first experimental results locating the angles of arrival of multiple sound sources, including the cries for help of a person, in an enclosed environment. The results are promising, as the system proves able to discriminate the noise generated by the propellers of the UAV, at the same time it identifies the angles of arrival of the direct sound signal and its first echoes reflected on the reflective surfaces.

BibTeX

@article{Izquierdo-2020-122756,
author = {Alberto Izquierdo and Lara Del Val and Juan J. Villacorta and Weikun Zhen and Sebastian Scherer and Zheng Fang},
title = {Feasibility of discriminating UAV propellers noise from distress signals to locate people in enclosed environments using MEMS microphone arrays},
journal = {Sensors: Special Issue - Sensors for Unmanned Aircraft Systems and Related Technologies},
year = {2020},
month = {February},
volume = {20},
number = {3},
pages = {597},
}