Khan Adil Mehmood, Lee Young-Koo, Lee Sungyoung Y, Kim Tae-Seong
Department of Computer Engineering, Kyung Hee University, Yongin-si 446-701, Korea.
IEEE Trans Inf Technol Biomed. 2010 Sep;14(5):1166-72. doi: 10.1109/TITB.2010.2051955. Epub 2010 Jun 7.
Physical-activity recognition via wearable sensors can provide valuable information regarding an individual's degree of functional ability and lifestyle. In this paper, we present an accelerometer sensor-based approach for human-activity recognition. Our proposed recognition method uses a hierarchical scheme. At the lower level, the state to which an activity belongs, i.e., static, transition, or dynamic, is recognized by means of statistical signal features and artificial-neural nets (ANNs). The upper level recognition uses the autoregressive (AR) modeling of the acceleration signals, thus, incorporating the derived AR-coefficients along with the signal-magnitude area and tilt angle to form an augmented-feature vector. The resulting feature vector is further processed by the linear-discriminant analysis and ANNs to recognize a particular human activity. Our proposed activity-recognition method recognizes three states and 15 activities with an average accuracy of 97.9% using only a single triaxial accelerometer attached to the subject's chest.
通过可穿戴传感器进行身体活动识别,可以提供有关个人功能能力程度和生活方式的有价值信息。在本文中,我们提出了一种基于加速度计传感器的人类活动识别方法。我们提出的识别方法采用分层方案。在较低层次,通过统计信号特征和人工神经网络(ANN)识别活动所属的状态,即静态、过渡或动态。较高层次的识别使用加速度信号的自回归(AR)建模,因此,将导出的AR系数与信号幅度面积和倾斜角度结合起来,形成一个增强特征向量。所得特征向量通过线性判别分析和人工神经网络进一步处理,以识别特定的人类活动。我们提出的活动识别方法仅使用附着在受试者胸部的单个三轴加速度计,就能识别三种状态和15种活动,平均准确率为97.9%。