用卷积神经网络识别跌倒危险因素

Sittichai Sukreep, P. Dajpratham, Chakarida Nukoolkit, S. Yamsaengsung, Thanapong Khajontantichaikun, P. Mongkolnam, S. Jaiyen, Vithida Chongsuphajaisiddhi
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引用次数: 0

摘要

由于独居老人的数量每年都在增加,一些看似普通的日常活动可能会增加这些老人严重受伤和致命事故的风险。虽然跌倒可以发生在任何地方,但最常发生在家中,尤其是在老年人中。如果不及时通知医务人员并提供援助,由此造成的伤害可能危及生命。由于跌倒是由许多不同的风险因素引起的,因此有必要识别潜在的事件并相应地做出必要的改变,以减少风险并防止跌倒。因此,我们提出了一种使用监控摄像头来检测日常活动(例如,弯腰、坐着、站立和行走)的系统,这些活动可能会增加跌倒的风险。此外,我们认识到跌倒的高风险因素,例如在进行活动时使用手机,不注意障碍物,上楼或下楼时不扶扶手。本文采用卷积神经网络进行活动分类。该预警系统用于检测老年人经常发生的跌倒风险因素,然后可用于触发信息和/或声音警报,以向指定人员(如医生,护理人员或家庭成员)提供及时的援助和护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognizing Fall Risk Factors with Convolutional Neural Network
As the number of elderly living alone is increasing every year, some seemingly common daily activities can potentially raise the risk of serious injuries and fatal accidents for these elderly. While falls can occur anywhere, they most often occur at home, this is especially true among the elderly. Without timely notification to medical personnel and assistance, the resulting injuries could be life-threatening. As falls are caused by many different risk factors, it is necessary to identify potential incidents and make needed changes accordingly in order to reduce the risk and prevent falls. Therefore, we propose a system using surveillance cameras to detect daily activities (e.g., bending down, sitting, standing, and walking) that potentially increase the risk of falling. Moreover, we recognize high risk factors of falls such as ones that involve using the phone while performing an activity, not paying attention to obstacles, and not holding the handrails while going upstairs or downstairs. Convolutional neural network is applied for activity classification in this work. This warning system is utilized for detecting risk factors of falls that commonly occur among the elderly, which could then be used to trigger a message and/or audible alert to designated persons such as a doctor, a caregiver, or family members for timely assistance and care.
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