多四旋翼协同自主导航系统与搜救中人的探测

Jean Dsouza, Rayyan Muhammad Rafikh, Vishnu G. Nair
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引用次数: 0

摘要

在灾害管理方面,有许多方法有助于发现和追踪被困受害者。在这种突发事件之后进行灾难管理需要在技术、可用性、可访问性、感知、培训、评估和可部署性方面做好准备。这可以通过对相互替代的不同技术进行密集的测试、评估和比较来实现,最终涵盖用于搜索和救援行动的技术的每个模块。学术界和工业界的深入研究和发展使得深度学习技术(如卷积神经网络的使用)的鲁棒性越来越强,这使得急救人员越来越依赖配备了最先进计算机的无人机(UAV)技术来处理来自摄像头和其他传感器的实时传感信息,以寻找生命的可能性。在本文中,我们提出了一种利用深度学习模型实现突发灾害中模拟生命检测的方法,同时利用合适的区域划分技术实现车辆之间的多机器人协调,进一步加快操作速度。开发了一个模拟测试平台,其参数与使用相同传感器的真实灾难环境相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Navigation System for Multi-Quadrotor Coordination and Human Detection in Search and Rescue
There are many methodologies assisting in the detection and tracking of trapped victims in the context of disaster management. Disaster management in the aftermath of such sudden occurrences requires preparedness in terms of technology, availability, accessibility, perception, training, evaluation, and deployability. This can be achieved through intensive test, evaluation and comparison of different techniques that are alternative to each other, eventually covering each module of the technology used for the search and rescue operation. Intensive research and development by academia and industry have led to an increased robustness of deep learning techniques such as the use of convolutional neural networks, which has resulted in increased reliance of first responders on the unmanned aerial vehicle (UAV) technology equipped with state-of-the-art computers to process real-time sensory information from cameras and other sensors in quest of possibility of life. In this paper, we propose a method to implement simulated detection of life in the sudden onset of disasters with the help of a deep learning model, and simultaneously implement multi-robot coordination between the vehicles with the use of a suitable region-partitioning technique to further expedite the operation. A simulated test platform was developed with parameters resembling real-life disaster environments using the same sensors.
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