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深度学习与 5G 及其他技术在游泳池儿童溺水预防中的应用

Deep Learning and 5G and Beyond for Child Drowning Prevention in Swimming Pools.

机构信息

Department of Network Engineering, BarcelonaTech (UPC) University, 08860 Castelldefels, Spain.

出版信息

Sensors (Basel). 2022 Oct 10;22(19):7684. doi: 10.3390/s22197684.

Abstract

Drowning is a major health issue worldwide. The World Health Organization's global report on drowning states that the highest rates of drowning deaths occur among children aged 1-4 years, followed by children aged 5-9 years. Young children can drown silently in as little as 25 s, even in the shallow end or in a baby pool. The report also identifies that the main risk factor for children drowning is the lack of or inadequate supervision. Therefore, in this paper, we propose a novel 5G and beyond child drowning prevention system based on deep learning that detects and classifies distractions of inattentive parents or caregivers and alerts them to focus on active child supervision in swimming pools. In this proposal, we have generated our own dataset, which consists of images of parents/caregivers watching the children or being distracted. The proposed model can successfully perform a seven-class classification with very high accuracies (98%, 94%, and 90% for each model, respectively). ResNet-50, compared with the other models, performs better classifications for most classes.

摘要

溺水是全球范围内的一个主要健康问题。世界卫生组织的全球溺水报告指出,溺水死亡发生率最高的人群是 1-4 岁的儿童,其次是 5-9 岁的儿童。幼儿在短短 25 秒内就可能无声无息地溺水,即使是在浅水区或婴儿游泳池中也是如此。该报告还指出,儿童溺水的主要风险因素是缺乏或监督不足。因此,在本文中,我们提出了一种基于深度学习的新型 5G 及以上儿童溺水预防系统,该系统可以检测和分类注意力不集中的父母或看护者的分心行为,并提醒他们专注于游泳池中儿童的主动监护。在本提案中,我们生成了自己的数据集,其中包含父母/看护者观看孩子或分心的图像。所提出的模型可以成功地对七个类别进行分类,准确率非常高(每个模型分别为 98%、94%和 90%)。与其他模型相比,ResNet-50 在大多数类别上的分类表现更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8439/9571852/d4b12e239e37/sensors-22-07684-g001.jpg

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