Deep Activity Recognition based on Patterns Discovery for Healthcare Monitoring

M. Javeed, Ahmad Jalal
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引用次数: 13

Abstract

Healthcare monitoring for humans is important due to several factors including life quality and early detection of health-related problems. Human activity patterns recognition is the most promising ways to monitor human health. Uprisings in the human activity patterns recognition has enabled researchers to recognize multiple health issues through the usage of multiple sensory devices such as motion-based wearable sensors. Irrelevant motion patterns can lead to overlook the important activity recognition in daily living. For this purpose, an early discovery of motion patterns has been proposed for activity recognition in this paper. Main objective is to support the activity detection through motion patterns and deep learning mechanism. The proposed method contains three layered architecture including pre-processing layer, features engineering layer, and classification layer. The anticipated study is investigated over an openly available dataset named Opportunity and results have shown improvement in terms of achieving higher accuracy rate of 88.57%.
基于模式发现的医疗监控深度活动识别
由于生活质量和健康相关问题的早期发现等几个因素,对人类的医疗保健监测很重要。人类活动模式识别是监测人类健康最有前途的方法。人类活动模式识别的兴起使研究人员能够通过使用多种感官设备(如基于运动的可穿戴传感器)来识别多种健康问题。不相关的运动模式会导致忽视日常生活中重要的活动识别。为此,本文提出了一种早期发现运动模式的方法来进行活动识别。主要目标是通过运动模式和深度学习机制支持活动检测。该方法包含预处理层、特征工程层和分类层三层体系结构。这项预期的研究是在一个名为“机遇”的公开数据集上进行的,结果显示,在达到88.57%的更高准确率方面有所改善。
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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