Non-Contact In-Home Activity Recognition System Utilizing Doppler Sensors

Shinya Misaki, Keisuke Umakoshi, Tomokazu Matsui, Hyuckjin Choi, Manato Fujimoto, K. Yasumoto
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引用次数: 4

Abstract

In recent years, various approaches for smart home technology have been developed, such as home appliances control, services for energy saving and support of daily life. In order to realize such services, we need a system which is able to accurately recognize various human activities using low-cost devices. To realize such a system, we need to address several problems: the required sensors are too expensive (P1); it is difficult to precisely recognize place-independent activities like reading (P2), and putting on a device causes a burden to people (P3) the information such as images infringe on the privacy of the occupants (P4). In this paper, we propose a method for activity recognition by utilizing a doppler sensor as a motion detection sensor and a machine learning technique to solve the problems above (P1-P4). Specifically, frequency characteristic is obtained from the signals of the doppler sensor and we construct a machine learning model using effective features, which is presented by Anguita, and speed of target calculated from the doppler frequency. In order to examine the usefulness of the proposed method and find out critical issues of realizing activity recognition, we have collected sensor data of 6 kinds of activities(stationary, smartphone operation, PC operation, reading, writing, and eating) performed by 10 participants. For leave-one-session-out cross-validation, the maximum average recognition accuracy was 95.7%, and the average for 10 participants was 81.0%. For leave-one-person-out cross validation, the average recognition accuracy of logistic regression shows maximum accuracy of 42.1%.
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利用多普勒传感器的非接触式家庭活动识别系统
近年来,智能家居技术的发展方向多种多样,如家电控制、节能服务、日常生活支持等。为了实现这样的服务,我们需要一个能够使用低成本设备准确识别各种人类活动的系统。为了实现这样一个系统,我们需要解决几个问题:所需的传感器太昂贵(P1);难以准确识别阅读等与地点无关的活动(P2),佩戴设备给人带来负担(P3),图像等信息侵犯了居住者的隐私(P4)。在本文中,我们提出了一种利用多普勒传感器作为运动检测传感器和机器学习技术来解决上述问题的活动识别方法(P1-P4)。具体来说,从多普勒传感器的信号中获得频率特性,并利用Anguita提出的有效特征和多普勒频率计算的目标速度构建机器学习模型。为了检验所提出方法的有效性,并找出实现活动识别的关键问题,我们收集了10名参与者进行的6种活动(静止、智能手机操作、PC操作、阅读、写作和进食)的传感器数据。对于留一段时间的交叉验证,最高平均识别准确率为95.7%,10名参与者的平均识别准确率为81.0%。对于留一人交叉验证,逻辑回归的平均识别准确率最高可达42.1%。
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