UAV-borne remote sensing for AI-assisted support of search and rescue missions

搜救 计算机科学 保险丝(电气) 激光雷达 城市搜救 雷达 无人机 传感器融合 一套 实时计算 能见度 平面图(考古学) 运动规划 人工智能 遥感 计算机安全 系统工程 机器人 工程类 移动机器人 电信 地理 考古 生物 气象学 电气工程 遗传学
作者
Reinhold Herschel,Patrick Wallrath,Michael Hofstätter,Philip Taupe,Emily Krüger,Martina Philippi,J Kunze,Jan Rotter,Victoria Heusinger,Meral Arı,René Kastner,Astrid Al-Akrawi
标识
DOI:10.1117/12.2636032
摘要

In search and rescue (SAR) missions every minute counts. Semi-collapsed buildings are among the difficult scenarios encountered by search and rescue teams. An UAV-based exploration system can provide crucial information on the accessibility of different sectors, hazards, and injured people. The research project "UAV-Rescue" aims to provide UAV-borne sensing and investigate the use of AI to support this powerful tool. The sensor suite contains a radar sensor for detecting people based on breath and pulse movement. A neural network interprets the extracted data to identify signs of human life and as such persons that need rescuing. We also fuse radar and lidar data to explore the environment of the UAV and obtain a robust basis for simultaneous localization and mapping even under restricted visibility conditions. Additionally, we plan to use AI to support the path planning of the drone taking the digital map as input. Furthermore, AI is leveraged to map intact and damaged building structures. Potentially hazardous gases common to urban settings are tracked. We fuse the acquired information into a model of the explored area with marked locations of potential hazards and people to be rescued. The project also addresses ethical and societal issues raised by the use of UAVs close to people as well as AI supported decision making. The talk will present the system concept including interfaces and sensor fusion approaches. We will show first results of a research project from static and dynamic measurement campaigns demonstrating the capability of radar and lidar based sensing in a complex urban environment.

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