K. Moriya, Eri Nakagawa, Manato Fujimoto, H. Suwa, Yutaka Arakawa, Aki Kimura, Satoko Miki, K. Yasumoto
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引用次数: 25
摘要
近年来,物联网技术越来越受到人们的关注。在物联网的众多应用中,家庭可能是最有希望的目标。在家庭中部署物联网的目的之一是自动识别日常生活活动(adl)。预计家庭ADL识别可以实现许多新服务,如老年人监测和低能耗电器控制。然而,在现有的ADL识别研究中,由于安装成本的原因,很难建立一个用于ADL识别的数据采集系统。在本文中,我们提出了一种通过使用ECHONET life -ready设备来降低ADL识别系统成本的方法,这种设备有望在未来得到广泛应用。ECHONET Lite是一种用于智能家居控制和传感器网络的通信协议,已按照ISO/IEC-4-3进行了标准化。所提出的方法利用来自设备和附着在它们上的运动传感器的信息(例如,开/关状态)作为特征,并通过机器学习识别adl。为了评估所提出的方法,我们在我们的智能家居测试台上收集了数据,而几个参与者住在那里。结果表明,该方法对9种不同的活动达到了68%左右的分类准确率。
Daily living activity recognition with ECHONET Lite appliances and motion sensors
Recently, IoT (Internet of Things) technologies have been attracting increasing attention. Among many applications of IoT, homes can be the most promising target. One of the purposes to deploy IoT in homes is automatic recognition of activities of daily living (ADLs). It is expected that ADL recognition in homes enables many new services such as elderly people monitoring and low energy appliance control. In existing studies on ADL recognition, however, it is hard to build a system to acquire data for ADL recognition in terms of installation cost. In this paper, we propose a method that reduces costs of the ADL recognition system by using ECHONET Lite-ready appliances which are expected to be widely spread in the future. ECHONET Lite is a communication protocol for control and sensor networks in smart-homes and standardized as ISO/IEC-4-3. The proposed method utilizes information (e.g., on/off state) from appliances and motion sensors attached to them as features and recognizes ADLs through machine learning. To evaluate the proposed method, we collected data in our smart-home testbed while several participants are living there. As a result, the proposed method achieved about 68% classification accuracy for 9 different activities.