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经验模态分解(EMD)在基于单轴加速度计的活动识别中的应用。

The application of EMD in activity recognition based on a single triaxial accelerometer.

作者信息

Liao Mengjia, Guo Yi, Qin Yajie, Wang Yuanyuan

机构信息

Department of Electronic Engineering, Fudan University, Shanghai 200433, China.

Key Laboratory of Medical Imaging Computing and Computer Assisted Intervention of Shanghai, China.

出版信息

Biomed Mater Eng. 2015;26 Suppl 1:S1533-9. doi: 10.3233/BME-151452.

Abstract

Activities recognition using a wearable device is a very popular research field. Among all wearable sensors, the accelerometer is one of the most common sensors due to its versatility and relative ease of use. This paper proposes a novel method for activity recognition based on a single accelerometer. To process the activity information from accelerometer data, two kinds of signal features are extracted. Firstly, five features including the mean, the standard deviation, the entropy, the energy and the correlation are calculated. Then a method called empirical mode decomposition (EMD) is used for the feature extraction since accelerometer data are non-linear and non-stationary. Several time series named intrinsic mode functions (IMFs) can be obtained after the EMD. Additional features will be added by computing the mean and standard deviation of first three IMFs. A classifier called Adaboost is adopted for the final activities recognition. In the experiments, a single sensor is separately positioned in the waist, left thigh, right ankle and right arm. Results show that the classification accuracy is 94.69%, 86.53%, 91.84% and 92.65%, respectively. These relatively high performances demonstrate that activities can be detected irrespective of the position by reducing problems such as the movement constrain and discomfort.

摘要

使用可穿戴设备进行活动识别是一个非常热门的研究领域。在所有可穿戴传感器中,加速度计因其多功能性和相对易用性而成为最常见的传感器之一。本文提出了一种基于单个加速度计的活动识别新方法。为了处理来自加速度计数据的活动信息,提取了两种信号特征。首先,计算包括均值、标准差、熵、能量和相关性在内的五个特征。然后,由于加速度计数据是非线性和非平稳的,使用一种称为经验模态分解(EMD)的方法进行特征提取。经过EMD后可以得到几个名为固有模态函数(IMF)的时间序列。通过计算前三个IMF的均值和标准差来添加额外的特征。采用一种名为Adaboost的分类器进行最终的活动识别。在实验中,将单个传感器分别放置在腰部、左大腿、右踝和右臂。结果表明,分类准确率分别为94.69%、86.53%、91.84%和92.65%。这些相对较高的性能表明,通过减少诸如运动限制和不适感等问题,可以在不考虑位置的情况下检测活动。

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