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Human activity recognition based on triaxial accelerometer using multi-feature weighted ensemble

机译:基于三轴加速度计使用多特征加权集合的人类活动识别

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Human activity recognition (HAR) has been widely used in some areas such as smart home, health care and so on. However, there are still some low recognition accuracy cases in actual scenarios. In order to improve the accuracy of recognition, we propose a multi-feature weighted ensemble classification method on triaxial accelerometer sensor data. We perform weighted integration on five base classifiers to obtain the final prediction classification label. Among these five base classifiers, three are K-nearest neighbor (KNN) classifiers with different features respectively using three traditional feature extraction methods from original data. Another two are currently popular deep learning models—Attention Mechanisms on Long Short-Term Memory Network (Attention-LSTM) and Convolutional Neural Network (CNN), which can automatically extract features and classify. We demonstrated the feasibility of this ensemble method on a dataset containing eight human daily activities. Comparing experimental results, our method achieved the best recognition effect, with an accuracy of 95.58%.
机译:人类活动识别(Har)已广泛应用于智能家庭,医疗保健等的某些领域。但是,实际方案中仍然存在一些低识别准确性案例。为了提高识别的准确性,我们在三轴加速度计传感器数据上提出了一种多特征加权集合分类方法。我们在五个基本分类器上执行加权集成,以获得最终预测分类标签。在这五个基本分类器中,三个是k最近邻(knn)分类器,其分别具有来自原始数据的三种传统特征提取方法的不同特征。另外两个目前是长期短期内存网络(注意力LSTM)和卷积神经网络(CNN)的深入学习模型的受欢迎机制,可以自动提取特征和分类。我们展示了该集合方法在包含八个人类日常活动的数据集中的可行性。比较实验结果,我们的方法实现了最佳识别效果,精度为95.58%。

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