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DCNN-based elderly activity recognition using binary sensors

机译:使用二进制传感器的基于DCNN的老年人活动识别

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摘要

In the past few decades, the number of elderly people who prefer to live independently is significantly increasing among the elderly people due to the issues of privacy invasion and elderly care cost. Device-free non-privacy invasive activity recognition is preferred for long-term monitoring. Thus, we propose a deep learning classification method for elderly activities using binary sensors (PIR sensor and door sensor). In particular, we present a Deep Convolutional Neural Network (DCNN) classification approach for detecting four basic activity classes which represent the basic human activities in a home monitoring environment, namely: Bed_to_Toilet, Eating, Meal_Preparation, and Relax. A real-world long-term annotated dataset is employed for evaluation of the activity recognition classifier. Dataset was offered by Center for Advanced Studies in Adaptive Systems (CASAS) project, and was collected by monitoring a cognitively normal elderly resident by binary sensors for 21 months First, we converted the annotated binary sensor data into a binary activity images for corresponding activities. Then, activity images are used for training and testing the DCNN classifier. Finally, classifiers are evaluated with 10-fold cross validation method. Experimental results showed the best DCNN classifier gives 99.36% of accuracy. Our next step is to improve this classifier for detection of intertwined complex activities of elderly and to implement it on a real life long-term elderly monitoring system.
机译:在过去的几十年中,由于隐私侵犯和老年人护理费用的问题,老年人中倾向于独立生活的老年人的数量显着增加。对于长期监控,首选无设备的非隐私侵入性活动识别。因此,我们提出了一种使用二进制传感器(PIR传感器和门传感器)的老年人活动的深度学习分类方法。特别是,我们提出了一种深度卷积神经网络(DCNN)分类方法,用于检测代表家庭监视环境中基本人类活动的四种基本活动类别,即Bed_to_Toilet,Eating,Meal_Preparation和Relax。使用真实世界的长期注释数据集来评估活动识别分类器。数据集由自适应系统高级研究中心(CASAS)项目提供,并通过监视由二进制传感器驻留的认知正常的老年人21个月来收集。首先,我们将带注释的二进制传感器数据转换为对应活动的二进制活动图像。然后,将活动图像用于训练和测试DCNN分类器。最后,使用10倍交叉验证方法对分类器进行评估。实验结果表明,最佳的DCNN分类器可提供99.36%的准确性。我们的下一步是改进此分类器,以检测老年人的复杂活动是否相互交织,并将其应用于实际的长期老年人监测系统中。

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