Human Activity Recognition Through Ensemble Learning of Multiple Convolutional Neural Networks

Narjis Zehra, Syed Hamza Azeem, M. Farhan
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引用次数: 8

Abstract

Human Activity Recognition is a field concerned with the recognition of physical human activities based on the interpretation of sensor data, including one-dimensional time series data. Traditionally, hand-crafted features are relied upon to develop the machine learning models for activity recognition. However, that is a challenging task and requires a high degree of domain expertise and feature engineering. With the development in deep neural networks, it is much easier as models can automatically learn features from raw sensor data, yielding improved classification results. In this paper, we present a novel approach for human activity recognition using ensemble learning of multiple convolutional neural network (CNN) models. Three different CNN models are trained on the publicly available dataset and multiple ensembles of the models are created. The ensemble of the first two models gives an accuracy of 94% which is better than the methods available in the literature.
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基于多卷积神经网络集成学习的人类活动识别
人类活动识别是一个基于传感器数据(包括一维时间序列数据)的解释来识别人类物理活动的领域。传统上,手工制作的特征依赖于开发用于活动识别的机器学习模型。然而,这是一项具有挑战性的任务,需要高度的领域专业知识和特征工程。随着深度神经网络的发展,模型可以从原始传感器数据中自动学习特征,从而得到更好的分类结果。在本文中,我们提出了一种利用多卷积神经网络(CNN)模型的集成学习进行人类活动识别的新方法。在公开可用的数据集上训练三种不同的CNN模型,并创建模型的多个集成。前两个模型的集成给出了94%的精度,优于文献中可用的方法。
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