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Accelerometer Signal-based Human Activity Recognition Using Augmented Autoregressive Model Coefficients and Artificial Neural Nets

机译:基于加速度计的人类活动识别使用增强自回归模型系数和人工神经网络

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Automatic recognition of human activities is one of the important and challenging research areas in proactive and ubiquitous computing. In this work, we present some preliminary results of recognizing human activities using augmented features extracted from the activity signals measured using a single triaxial accelerometer sensor and artificial neural nets. The features include autoregressive (AR) modeling coefficients of activity signals, signal magnitude areas (SMA), and title angles (TA). We have recognized four human activities using AR. coefficients (ARC) only, ARC with SMA, and ARC with SMA and TA. With the last augmented features, we have achieved the recognition rate above 99% for all four activities including lying, standing, walking, and running. With our proposed technique, real time recognition of some human activities is possible.
机译:自动识别人类活动是主动和无处不在的计算中的重要和挑战性的研究领域之一。在这项工作中,我们展示了使用使用单一三轴加速度计传感器和人工神经网络测量的活动信号中提取的增强特征来识别人类活动的一些初步结果。该特征包括自回归(AR)的活动信号,信号幅度区域(SMA)和标题角(TA)建模系数。我们使用AR认可了四项人类活动。仅限系数(弧),用SMA弧,带有SMA和TA的电弧。通过最后增强功能,我们在所有四项活动中达到了99%以上的识别率,包括撒谎,站立,走路和跑步。通过我们提出的技术,实时识别某些人类活动是可能的。

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