IEEE J Biomed Health Inform. 2019 Mar;23(2):693-702. doi: 10.1109/JBHI.2018.2833618. Epub 2018 May 7.
Elderly population (over the age of 60) is predicted to be 1.2 billion by 2025. Most of the elderly people would like to stay alone in their own house due to the high eldercare cost and privacy invasion. Unobtrusive activity recognition is the most preferred solution for monitoring daily activities of the elderly people living alone rather than the camera and wearable devices based systems. Thus, we propose an unobtrusive activity recognition classifier using deep convolutional neural network (DCNN) and anonymous binary sensors that are passive infrared motion sensors and door sensors. We employed Aruba annotated open data set that was acquired from a smart home where a voluntary single elderly woman was living inside for eight months. First, ten basic daily activities, namely, Eating, Bed_to_Toilet, Relax, Meal_Preparation, Sleeping, Work, Housekeeping, Wash_Dishes, Enter_Home, and Leave_Home are segmented with different sliding window sizes, and then converted into binary activity images. Next, the activity images are employed as the ground truth for the proposed DCNN model. The 10-fold cross-validation evaluation results indicated that our proposed DCNN model outperforms the existing models with F-score of 0.79 and 0.951 for all ten activities and eight activities (excluding Leave_Home and Wash_Dishes), respectively.
预计到 2025 年,老年人口(60 岁以上)将达到 12 亿。由于高昂的养老成本和隐私侵犯,大多数老年人更喜欢独自留在自己的房子里。非侵入式活动识别是监测独自生活的老年人日常活动的最优选解决方案,而不是基于摄像头和可穿戴设备的系统。因此,我们提出了一种使用深度卷积神经网络(DCNN)和匿名二进制传感器(被动红外运动传感器和门传感器)的非侵入式活动识别分类器。我们使用了 Aruba 标注的开放数据集,该数据集是从一个智能家居中获取的,一名自愿的单身老年女性在那里居住了八个月。首先,我们使用不同的滑动窗口大小对十种基本日常活动(即进食、上厕所、放松、准备餐食、睡眠、工作、家务、洗碗、回家和离家)进行分割,然后将其转换为二进制活动图像。接下来,我们将活动图像用作所提出的 DCNN 模型的地面实况。10 倍交叉验证评估结果表明,我们提出的 DCNN 模型的 F 分数分别为 0.79 和 0.951,优于所有十种活动和八种活动(不包括离家和洗碗)的现有模型。