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Human Activity Recognition Based on Convolutional Neural Network

机译:基于卷积神经网络的人类活动识别

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It is increasingly essential to monitor clinical signs and physical activities of elderly, looking for early warning signs or to recognize abnormal situations, such as a fall. In recent years, the usage of wearable sensors has increased significantly. Data from wearable devices can be used to recognize human movement patterns while performing various activities. Accelerometers have been widely used in human activity recognition systems, however, instead of traditional techniques used for feature extraction, the scientific community is currently developing classifiers based on deep learning techniques, seeking better performance and lower computational cost. Con-volutional neural networks (CNN) are the main deep learning technique used in this context. These networks adjust filter coefficients that are applied to small regions of the data, extracting local patterns and their variations. This paper presents a human activity recognition system based on convolutional neural networks to classify six activities-walking, running, walking upstairs, walking downstairs, standing and sitting-from accelerometer data. Results demonstrate the ability of the proposed CNN-based model to obtain a state-of-art performance, with accuracy of 94.89% and precision of 95.78% for the best configuration.
机译:监测老年人的临床症状和体育活动越来越重要,寻找预警标志或识别异常情况,例如秋季。近年来,可穿戴传感器的使用显着增加。可穿戴设备的数据可用于在执行各种活动的同时识别人类运动模式。加速度计已被广泛用于人类活动识别系统,但是,对于特征提取而不是传统技术,科学界目前正在基于深度学习技术开发分类器,寻求更好的性能和较低的计算成本。 Con-Volutional神经网络(CNN)是在此背景下使用的主要深度学习技术。这些网络调整应用于数据的小区域的滤波器系数,提取本地模式及其变化。本文介绍了基于卷积神经网络的人类活动识别系统,分类六项活动 - 行走,跑步,楼上,走在楼下,站立和坐在加速度计数据。结果表明所提出的基于CNN-模型以获得国家的技术的性能,具有94.89%的准确度和95.78%的精度的最佳配置的能力。

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