日常生活监测活动检测:饮食

S. Zhang, M. Ang, W. Xiao, C. Tham
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引用次数: 30

摘要

提出了一种两阶段动作识别方法,用于检测与人体饮食有关的手臂动作。从该系统中获取的信息可用于日常生活监控领域。我们证明,仅使用可穿戴惯性传感器就可以识别和检测进食或饮水动作。该方法分为两个步骤:特征提取和分类。手臂运动是进食活动的主要特征。因此,第一步是从手臂运动原始数据中提取特征。首先基于欧拉角建立了用于三维空间特征提取的运动运动学模型。应用扩展卡尔曼滤波(EKF)从三维空间的进食动作信息中实时提取特征。第二步是分类。基于特征的时空变化特性,采用分层时间记忆(HTM)网络对提取的进食动作特征进行分类。HTM算法用于分类的优点是它不仅可以对统计动作进行分类,而且可以处理随时间和空间变化的动态信号。HTM对动态动作检测具有较高的准确性。利用三维加速度计对该方法进行了实际进食和饮水动作的测试。实验结果表明,基于HTM和EKF的动作识别方法具有很高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of activities for daily life surveillance: Eating and drinking
A two-stage action recognition approach for detecting arm gesture related to human eating or drinking is proposed in this paper. Information retrieved from such a system can be used in the domain of daily life surveillance. We demonstrate that eating or drinking actions can be featured and detected using wearable inertial sensors only. The proposed approach has two steps: feature extraction and classification. The arm movement is the main features of the eating activity. Thus the first step is to extract features from the arm movement raw data. The movement kinematics model for feature extraction in 3D space is firstly built up based on Eular angles. Extended Kalman filter (EKF) is applied to extract the features from the eating action information in a three dimensional space in real time. The second step is the classification. The hierarchical temporal memory (HTM) network is adopted to classify the extracted features of the eating action based on the space and time varying property of the features. The advantages for the HTM algorithm used for classification is that it not only can classify the statistic actions but also can deal with the dynamic signals which is varying with both of the space and time. The HTM can perform high accuracy for the dynamic action detection. The proposed approach is tested through the real eating and drinking action by using the 3-D accelerometer. The experimental results show that the HTM and EKF based method can perform the action recognition with very high accuracy.
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