基于树莓派和深度学习模型的视觉实时灾害识别监测系统

Daryl B. Valdez, Rey Anthony G. Godmalin, Allan Josephus M. Bunga
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引用次数: 0

摘要

自然灾害是一种破坏性力量,极大地影响到全世界所有人。在菲律宾,地震、热带气旋和洪水是近年来袭击该国最频繁的灾害。一些利用技术进行的研究已经取得了不同程度的成功,以减少这些不可控事件的影响。与其他不同的是,本文研究了在树莓派3b中部署的深度学习模型的使用,用于地面,实时,自动灾难识别和监测。它的目的是使应急人员和社区中的人们能够在灾害发生时轻松地实时发现灾害,减少生命损失和财产损失。为此,提出了一种新型的低成本监测系统。对应急响应人员进行了实验和调查,验证了系统的可行性和可接受性。结果表明,所提出的系统检测灾难具有很高的性能。此外,它利用较低的CPU和内存占用,同时在灾难识别期间实现每秒7帧的处理速率。此外,受访者认为该系统清晰,有用,创新,易于使用。因此,该系统能够实时识别灾害,证明对社区中的人们是可接受的和有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-based Real-Time Disaster Recognition Monitoring System using Raspberry Pi and Deep Learning Model
Natural disasters are destructive forces that greatly affect all people around the world. In the Philippines, earthquakes, tropical cyclones, and floods are some of the most frequent disasters that struck the country in recent years. Several studies utilizing technology have been conducted with varying degrees of success to reduce the impact of these uncontrollable events. Different from others, this paper investigates the use of a Deep Learning model deployed in a Raspberry Pi 3b for on-the-ground, real-time, automated disaster recognition and monitoring. It aims to empower emergency responders and people in the community to easily detect disasters as they happen in real-time, reducing the loss of life and damage to property. To this end, a novel low-cost monitoring system is proposed. Experiments and a survey made to emergency responders were conducted to validate the system’s feasibility and acceptability. Results revealed that the proposed system detects disasters with a high degree of performance. Also, it utilizes a low CPU and memory footprint while achieving seven frames per second processing rate during disaster recognition. In addition, the respondents find the system clear, helpful, innovative, and easy to use. Hence, the system is capable of recognizing disasters in real-time, proving acceptable and beneficial to people in the community.
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