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Motion Recognition by Using a Stacked Autoencoder-Based Deep Learning Algorithm with Smart Phones

机译:基于堆叠的基于自动编码器的智能手机深度学习算法的运动识别

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Due to the increasing machine learning applications in mobile health and security monitoring scenarios, human motion recognition by sensor devices has received remarkable attention from both academic and engineering fields. In this paper, we propose a motion recognition scheme by using a stacked autoencoder based deep learning algorithm with smart phones. Since common sensors such as gravity sensors, accelerometers, gyroscopes, linear accelerometers and magnetometers have been already equipped in Android or iOS based smart phones, the sensor data can be easily recorded by the smart phone that an experimenter carries around. A stacked autoencoder based deep learning algorithm is employed here for data classification so as to precisely recognize several basic motions that are standing, walking, sitting, running, going upstairs and going downstairs, respectively. Experimental results indicate that the stacked autoencoder based deep learning algorithm achieves higher accuracy for human motion recognition than traditional neural network methods.
机译:由于在移动健康和安全监控场景中越来越多的机器学习应用程序,传感器设备对人体运动的识别已经引起了学术界和工程学领域的极大关注。在本文中,我们提出了一种基于堆叠的自动编码器的基于深度学习算法的智能手机运动识别方案。由于基于Android或iOS的智能手机已经配备了重力传感器,加速度计,陀螺仪,线性加速度计和磁力计等常见传感器,因此实验人员随身携带的智能手机可以轻松记录传感器数据。这里使用基于堆叠式自动编码器的深度学习算法进行数据分类,以便精确识别分别站立,行走,坐着,奔跑,上楼和下楼的几种基本运动。实验结果表明,基于堆叠式自动编码器的深度学习算法比传统的神经网络方法具有更高的人体运动识别精度。

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