Low-cost and Device-free Activity Recognition System with Energy Harvesting PIR and Door Sensors

Yukitoshi Kashimoto, K. Hata, H. Suwa, Manato Fujimoto, Yutaka Arakawa, Takeya Shigezumi, Kunihiro Komiya, Kenta Konishi, K. Yasumoto
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引用次数: 22

Abstract

Progress of IoT and ubiquitous computing technologies has strong anticipation to realize smart services in households such as efficient energy-saving appliance control and elderly monitoring. In order to put those applications into practice, high-accuracy and low-cost in-home living activity recognition is essential. Many researches have tackled living activity recognition so far, but the following problems remain: (i)privacy exposure due to utilization of cameras and microphones; (ii) high deployment and maintenance costs due to many sensors used; (iii) burden to force the user to carry the device and (iv) wire installation to supply power and communication between sensor node and server; (v) few recognizable activities; (vi) low recognition accuracy. In this paper, we propose an in-home living activity recognition method to solve all the problems. To solve the problems (i)--(iv), our method utilizes only energy harvesting PIR and door sensors with a home server for data collection and processing. The energy harvesting sensor has a solar cell to drive the sensor and wireless communication modules. To solve the problems (v) and (vi), we have tackled the following challenges: (a) determining appropriate features for training samples; and (b) determining the best machine learning algorithm to achieve high recognition accuracy; (c) complementing the dead zone of PIR sensor semipermanently. We have conducted experiments with the sensor by five subjects living in a home for 2-3 days each. As a result, the proposed method has achieved F-measure: 62.8% on average.
具有能量收集PIR和门传感器的低成本和无设备活动识别系统
物联网和普适计算技术的进步,对实现高效节能家电控制、老人监护等家庭智能服务有着强烈的期待。为了将这些应用付诸实践,高精度、低成本的家庭生活活动识别是必不可少的。目前已有许多研究对生活活动识别进行了研究,但仍存在以下问题:(1)摄像头和麦克风的使用导致隐私暴露;(ii)由于使用了许多传感器,部署和维护成本高;(iii)负担,以迫使用户携带设备;(iv)电线安装,以提供传感器节点与服务器之间的电源和通信;几乎没有可辨认的活动;(六)识别精度低。在本文中,我们提出了一种家庭生活活动识别方法来解决这些问题。为了解决问题(i)- (iv),我们的方法仅利用能量收集PIR和带有家庭服务器的门传感器进行数据收集和处理。能量收集传感器具有驱动传感器的太阳能电池和无线通信模块。为了解决第(五)和(六)个问题,我们解决了以下挑战:(a)为训练样本确定合适的特征;(b)确定最佳的机器学习算法,以达到较高的识别精度;(c)半永久性地补充PIR传感器的盲区。我们对5名住在家中的受试者进行了2-3天的传感器实验。结果表明,该方法的平均f值为62.8%。
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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