Computer Vision Enabled Drowning Detection System

Upulie Handalage, Nisansali Nikapotha, Chanaka Subasinghe, Tereen Prasanga, Thusithanjana Thilakarthna, D. Kasthurirathna
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引用次数: 2

Abstract

Safety is paramount in all swimming pools. The current systems expected to address the problem of ensuring safety at swimming pools have significant problems due to their technical aspects, such as underwater cameras and methodological aspects such as the need for human intervention in the rescue mission. The use of an automated visual-based monitoring system can help to reduce drownings and assure pool safety effectively. This study introduces a revolutionary technology that identifies drowning victims in a minimum amount of time and dispatches an automated drone to save them. Using convolutional neural network (CNN) models, it can detect a drowning person in three stages. Whenever such a situation like this is detected, the inflatable tube-mounted self-driven drone will go on a rescue mission, sounding an alarm to inform the nearby lifeguards. The system also keeps an eye out for potentially dangerous actions that could result in drowning. This system’s ability to save a drowning victim in under a minute has been demonstrated in prototype experiments' performance evaluations.
计算机视觉溺水检测系统
安全是所有游泳池的头等大事。目前的系统预计将解决确保游泳池安全的问题,由于其技术方面,如水下摄像机和方法方面,如在救援任务中需要人为干预,存在重大问题。使用基于视觉的自动监控系统可以帮助减少溺水,有效地确保泳池安全。这项研究介绍了一种革命性的技术,可以在最短的时间内识别溺水者,并派遣自动无人机进行救援。利用卷积神经网络(CNN)模型,它可以在三个阶段检测落水者。每当发现这种情况时,安装在充气管上的自动驾驶无人机就会执行救援任务,并发出警报,通知附近的救生员。该系统还会留意可能导致溺水的潜在危险行为。该系统在一分钟内拯救溺水者的能力已经在原型实验的性能评估中得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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