Computer Vision Based Privacy Protected Fall Detection and Behavior Monitoring System for the Care of the Elderly

Yugma P.N. Fernando, Kasun Gunasekara, Kumary P. Sirikumara, Upeksha E. Galappaththi, Thusithanjana Thilakarathna, D. Kasthurirathna
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引用次数: 2

Abstract

The elderly population constitutes a large percentage of the society hence making elderly care a top priority. Falls have been identified as a leading issue among major problems faced by them. Concerning this, many monitoring devices have been developed, most of them focusing solely on one specific health care aspect or related to fall detection, and are based on sensors and wearable devices which are usually uncomfortable for daily use. Considering these aspects, the solution proposed in this research is a real time computer vision-based system that monitors behavior and detects anomalies through deep learning. The monitoring is mainly focused on detecting unusual behavior including falls, and monitoring routine activities to detect deviations. A device approach is used to deploy the deep learning models and consists of IP camera-based monitoring which uses a special privacy protected procedure that ensures the detection is done based on meta data and therefore no camera image or footage is stored. The research is mainly focused on four major components which are user identification, fall detection, routine variance detection and device configuration.
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基于计算机视觉的老年人隐私保护跌倒检测与行为监测系统
老年人口占社会的很大比例,因此使老年人护理成为当务之急。跌倒已被确定为他们面临的主要问题之一。关于这一点,已经开发了许多监测设备,其中大多数只专注于一个特定的医疗保健方面或与跌倒检测有关,并且基于传感器和可穿戴设备,这些设备通常在日常使用中不舒服。考虑到这些方面,本研究提出的解决方案是一个基于计算机视觉的实时系统,通过深度学习来监控行为并检测异常。监测主要集中在检测异常行为,包括跌倒,并监测日常活动,以发现偏差。设备方法用于部署深度学习模型,包括基于IP摄像机的监控,该监控使用特殊的隐私保护程序,确保检测是基于元数据完成的,因此不会存储摄像机图像或镜头。研究主要集中在用户识别、跌倒检测、例程方差检测和设备配置四个主要部分。
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