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A body sensor data fusion and deep recurrent neural network-based behavior recognition approach for robust healthcare

机译:一种用于稳健医疗保健的身体传感器数据融合与基于深度反复性神经网络的行为识别方法

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Recently, human healthcare from body sensor data has been getting remarkable research attentions by a huge range of human-computer interaction and pattern analysis researchers due to its practical applications such as smart health care systems. For example, smart wearable-based behavior recognition system can be used to assist the rehabilitation of patients in a smart clinic to improve the rehabilitation process and to prolong their independent life. Although there are many ways of using distributed sensors to monitor vital signs and behavior of people, physical human action recognition via body sensors provides valuable data regarding an individual's functionality and lifestyle. In this work, we propose a body sensor-based system for behavior recognition using deep Recurrent Neural Network (RNN), a promising deep learning algorithm based on sequential information. We perform data fusion from multiple body sensors such as electrocardiography (ECG), accelerometer, magnetometer, etc. The extracted features are further enhanced via kernel principal component analysis (KPCA). The robust features are then used to train an activity RNN, which is later used for behavior recognition. The system has been compared against the conventional approaches on three publicly available standard datasets. The experimental results show that the proposed approach outperforms the available state-of-the-art methods.
机译:最近,来自身体传感器数据的人类医疗保健通过智能保健系统等实际应用,通过巨大的人机交互和模式分析研究人员一直在卓越的研究关注。例如,基于智能可穿戴的行为识别系统可用于帮助患者在智能诊所中的康复,以改善康复过程并延长其独立的生活。虽然有许多方法使用分布式传感器来监测人们的生命体征和行为,但是通过身体传感器的物理人体行动识别提供了有关个人功能和生活方式的有价值的数据。在这项工作中,我们提出了一种基于身体传感器的系统,用于使用深度复发性神经网络(RNN),基于顺序信息的有前途的深度学习算法的行为识别。我们从诸如心电图(ECG),加速度计,磁力计等的多个体传感器进行数据融合。通过内核主成分分析(KPCA)进一步增强了提取的特征。然后,鲁棒特征用于训练活动RNN,后来用于行为识别。系统已经与三个公开的标准数据集上的传统方法进行了比较。实验结果表明,所提出的方法优于现有的现有方法。

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