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Human Activity Recognition by Using Different Deep Learning Approaches for Wearable Sensors

机译:使用不同的深层学习方法来识别可穿戴传感器的方法

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摘要

With the spread of wearable sensors, the solutions to the task of activity recognition by using the data obtained from the sensors have become widespread. Recognition of activities owing to wearable sensors such as accelerometers, gyroscopes, and magnetometers, etc. has been studied in recent years. Although there are several applications in the literature, differently in this study, deep learning algorithms such as Convolutional Neural Networks, Convolutional LSTM, and 3D Convolutional Neural Networks fed by Convolutional LSTM have been used in human activity recognition task by feeding with data obtained from accelerometer sensor. For this purpose, a frame was formed with raw samples of the same activity which were collected consecutively from the accelerometer sensor. Thus, it is aimed to capture the pattern inherent in the activity and due to preserving the continuous structure of the movement.
机译:随着可穿戴传感器的扩散,通过使用从传感器获得的数据来实现活动识别的任务的解决方案已变得普遍。 近年来研究了由于可穿戴传感器,例如加速度计,陀螺仪和磁力计等的活动的认识。 虽然文献中有几种应用,但在本研究中不同,诸如卷积神经网络,卷积性LSTM的卷积神经网络,卷积LSTM和3D卷积神经网络等深入学习算法已经通过从加速度计获得的数据馈送来用于人类活动识别任务 传感器。 为此目的,形成框架,其具有与加速度计传感器连续收集的相同活性的原料样本。 因此,旨在捕获活动中固有的模式,并且由于保留了运动的连续结构。

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