Deep Learning Used to Recognition Swimmers Drowning

Jiaqing Jian, Chuin-Mu Wang
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引用次数: 2

Abstract

Many people believe that when drowning occurs, there will be calls for help. In fact, people who are drowning do not get too many splashes or cry for help. They only try to get themselves out of the water by treading on the water. The drowning condition may cause serious brain damage, so it is extremely important to shorten the time it takes to detect the occurrence of drowning and rescue.This paper proposes using computer image processing technology to introduce artificial intelligence motion technology, mounting the camera on the bottom of the swimming pool, and use OpenPose to mark the image joint point features, and input the captured joint point features into the recursive neural network to determine whether the swimmer is drowning. The final training result is about 89.4% accurate, so it can be used to assist on-site lifeguards to detect swimmers who may be drowning, and to reduce incidents that cannot be detected immediately
深度学习用于识别溺水游泳者
许多人相信当溺水发生时,会有人呼救。事实上,溺水的人不会溅出太多的水花,也不会大声呼救。它们只是试图通过踩水来使自己离开水。溺水情况可能造成严重的脑损伤,因此缩短发现溺水发生和抢救的时间极为重要。本文提出利用计算机图像处理技术引入人工智能运动技术,将摄像机安装在泳池底部,利用OpenPose对图像连接点特征进行标记,并将采集到的连接点特征输入递归神经网络,判断游泳者是否溺水。最终训练结果的准确率约为89.4%,可用于协助现场救生员发现可能溺水的游泳者,减少无法立即发现的事件
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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