Human activity sensing using Wi-Fi channel impulse response
This dissertation delves into the field of Human Activity Recognition(HAR), focusing on the intersection of deep learning and Wi-Fi technologies. Our main challenge is to implement HAR using Wi-Fi channel response, which is an evolving area where traditional HAR systems rely primarily on sensor-base...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1754592024-04-26T16:00:44Z Human activity sensing using Wi-Fi channel impulse response Du, Jiahui Law Choi Look School of Electrical and Electronic Engineering ECLLAW@ntu.edu.sg Computer and Information Science Engineering CSI HAR Deep Learning This dissertation delves into the field of Human Activity Recognition(HAR), focusing on the intersection of deep learning and Wi-Fi technologies. Our main challenge is to implement HAR using Wi-Fi channel response, which is an evolving area where traditional HAR systems rely primarily on sensor-based data. By reviewing existing research, we noticed that research in this field is valuable, and the mature application of deep learning in the traditional HAR field provides ideas for this project. This dissertation mainly explores the performance of neural network architectures such as LSTM, BiLSTM, CNN+GRU and Visual Transformers (ViT) in HAR tasks, and explores the feasibility of Wi-Fi as a non-traditional data source. The dissertation trained and tested several neural networks based on the Widar and NTU-Fi datasets, respectively, and optimized the problems that existed during the testing of the networks corresponding to different datasets, with the best model in this dissertation having an accuracy of 1.27 times higher than that of SenseFi. This research demonstrates the potential of combining Wi-Fi technology with deep learning to pave the way for smarter, more efficient systems in healthcare, home automation, and industrial environments, and marks a major advancement in human-computer interaction that will provide contributions to the field. Master's degree 2024-04-24T05:46:30Z 2024-04-24T05:46:30Z 2024 Thesis-Master by Coursework Du, J. (2024). Human activity sensing using Wi-Fi channel impulse response. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175459 https://hdl.handle.net/10356/175459 en application/pdf Nanyang Technological University |
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Computer and Information Science Engineering CSI HAR Deep Learning Du, Jiahui Human activity sensing using Wi-Fi channel impulse response |
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This dissertation delves into the field of Human Activity Recognition(HAR), focusing on the intersection of deep learning and Wi-Fi technologies. Our main challenge is to implement HAR using Wi-Fi channel response, which is an evolving area where traditional HAR systems rely primarily on sensor-based data. By reviewing existing research, we noticed that research in this field is valuable, and the mature application of deep learning in the traditional HAR
field provides ideas for this project. This dissertation mainly explores the performance of neural network architectures such as LSTM, BiLSTM, CNN+GRU and Visual Transformers (ViT) in HAR tasks, and explores the feasibility of Wi-Fi as a non-traditional data source. The dissertation trained and tested several neural networks based on the Widar and NTU-Fi datasets, respectively, and optimized the problems that existed during the testing of the networks corresponding to different datasets, with the best model in this dissertation having an accuracy of 1.27 times higher than that of SenseFi. This research demonstrates the potential of combining Wi-Fi technology with deep learning to pave the way for smarter, more efficient systems in healthcare, home automation, and industrial environments, and marks a major advancement in human-computer interaction that will provide contributions to the field. |
author2 |
Law Choi Look |
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Law Choi Look Du, Jiahui |
format |
Thesis-Master by Coursework |
author |
Du, Jiahui |
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Du, Jiahui |
title |
Human activity sensing using Wi-Fi channel impulse response |
title_short |
Human activity sensing using Wi-Fi channel impulse response |
title_full |
Human activity sensing using Wi-Fi channel impulse response |
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Human activity sensing using Wi-Fi channel impulse response |
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Human activity sensing using Wi-Fi channel impulse response |
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human activity sensing using wi-fi channel impulse response |
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Nanyang Technological University |
publishDate |
2024 |
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https://hdl.handle.net/10356/175459 |
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