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Human daily activity recognition based on online sequential extreme learning machine

机译:基于在线连续极限学习机的人类日常活动识别

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Wireless-sensor-network-based health care for human activities involves functional assessment of daily activities. Traditionally, the recognition algorithms adopt batching learning to train network. However, the amount of sensor data is considerable and not all training data arrives together, the learning procedure is time-consuming and the network weights can not be updated online. In this paper, a classifier based on Online Sequential Extreme Learning Machine (OS-ELM) is presented, and used to recognize falling down, running, upstairs, lying down, downstairs, walking, standing and sitting. The system for monitoring human daily activities is designed through a triaxial accelerometer and two pressure sensors in the laboratory and the experiment results are encouraging for human daily activity recognition.
机译:基于无线传感器网络的人类活动保健涉及日常活动的功能评估。传统上,识别算法采用批处理学习来训练网络。但是,传感器数据量很大,并且并非所有训练数据都一起到达,学习过程很耗时,并且网络权重无法在线更新。在本文中,提出了一种基于在线顺序极限学习机(OS-ELM)的分类器,该分类器用于识别跌倒,奔跑,上楼,躺下,楼下,走路,站立和坐下。通过实验室中的三轴加速度计和两个压力传感器设计了用于监视人类日常活动的系统,并且实验结果对于识别人类的日常活动是令人鼓舞的。

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