文章詳目資料

Journal of Computers EIMEDLINEScopus

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篇名 Human Activity Recognition Based on CNN and LSTM
卷期 34:3
作者 Xu-Nan Tan
頁次 221-235
關鍵字 human activity recognitionCNNLSTMdeep learningmodel integrationEIMEDLINEScopus
出刊日期 202306
DOI 10.53106/199115992023063403016

中文摘要

英文摘要

Human activity recognition (HAR) based on wearable devices is an emerging field of great interest. HAR can provide additional information on a human subject’s physical status. Utilising new technologies for HAR will become very meaningful with the development of deep learning. This study aims to mine deep learning models for HAR prediction with the highest accuracy on the basis of time-series data collected by mobile wearable devices. To this end, convolutional neural networks (CNN) and long short-term memory neural networks (LSTM) are combined in a deep network model to extract behavioural facts. The proposed CNN model contains two convolutional layers and a maximum pooling layer, and batch normalisation is added after each convolutional layer to improve convergence speed and avoid overfitting. This structure yields significant results in terms of performance. The model is evaluated on the MHEALTH dataset with a test set accuracy of 99.61% and can be used for the intelligent recognition of human activity. The results of this study show that the proposed model has better robustness and motion pattern detection capability compared to other models.

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