Intelligent System Detection of Dead Victims at Natural Disaster Areas Using Deep Learning

IF 0.7 Q4 GEOSCIENCES, MULTIDISCIPLINARY Journal of Disaster Research Pub Date : 2024-02-01 DOI:10.20965/jdr.2024.p0204
M. Z. S. Hadi, P. Kristalina, Aries Pratiarso, M. H. Fauzan, Roycardo Nababan
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Abstract

Disaster is the occurrence or sequence of occurrences that endangers and disrupts people’s lives and livelihoods due to natural and/or non-natural as well as human elements, including fatalities, property loss, environmental harm, and psychological effects. In addition to concentrating on the victims’ safety and their own safety, the search and rescue (SAR) team plays a significant part in this evacuation operation. Based on these issues, this study examined how to use a drone equipped with electronic equipment to search for victims on the ground to speed up the evacuation process at natural disaster sites, assisting the evacuation process and enhancing the safety of the SAR team. The drone carries a near-infrared camera and GPS. The images captured by the camera provide the parameters for classifying victims using deep learning. The system has been implemented by sampling data from human poses resembling the position of the victims’ bodies from natural disasters. From the experimental results, the system can detect objects with high accuracy, that is, 99% in both static and dynamic conditions. The best model results were obtained at a height of 2 meters with a low error percentage.
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利用深度学习检测自然灾害地区死亡受害者的智能系统
灾害是指由于自然和/或非自然以及人为因素,包括人员伤亡、财产损失、环境危害和心理影响等,危及和扰乱人们生活和生计的事件或事件序列。除了关注灾民的安全和自身安全外,搜救(SAR)团队在此次疏散行动中也发挥着重要作用。基于这些问题,本研究探讨了如何使用配备电子设备的无人机在地面搜索灾民,以加快自然灾害现场的疏散过程,协助疏散过程并提高搜救小组的安全性。无人机装有近红外相机和全球定位系统。摄像头捕捉到的图像为利用深度学习对灾民进行分类提供了参数。该系统是通过从与自然灾害中遇难者身体位置相似的人体姿势中提取数据来实现的。从实验结果来看,该系统在静态和动态条件下检测物体的准确率都很高,达到 99%。最佳模型结果是在 2 米高处获得的,误差率较低。
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来源期刊
Journal of Disaster Research
Journal of Disaster Research GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
1.60
自引率
37.50%
发文量
113
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