Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms
Wi-Fi-based human activity recognition (HAR) is a non-intrusive and privacy-preserving method that leverages Channel State Information (CSI) for identifying human activities. However, existing approaches often struggle with robust feature extraction, especially in dynamic and multi-environment scena...
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التنسيق: | Journal article |
اللغة: | English |
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2025
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الوصول للمادة أونلاين: | https://scholar.dlu.edu.vn/handle/123456789/5040 https://www.mdpi.com/1424-8220/25/4/1038 |
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oai:scholar.dlu.edu.vn:123456789-50402025-08-20T09:28:01Z Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms Thai Duy Quy Lin, Chih-Yang Shih, Timothy K Wi-Fi sensing; channel state information (CSI); gate residual network; human activity recognition (HAR); multi-head attention; multi-scale convolutional neural networks; phase and amplitude Wi-Fi-based human activity recognition (HAR) is a non-intrusive and privacy-preserving method that leverages Channel State Information (CSI) for identifying human activities. However, existing approaches often struggle with robust feature extraction, especially in dynamic and multi-environment scenarios, and fail to effectively integrate amplitude and phase features of CSI. This study proposes a novel model, the Phase-Amplitude Channel State Information Network (PA-CSI), to address these challenges. The model introduces two key innovations: (1) a dual-feature approach combining amplitude and phase features for enhanced robustness, and (2) an attention-enhanced feature fusion mechanism incorporating multi-scale convolutional layers and Gated Residual Networks (GRN) to optimize feature extraction. Experimental results demonstrate that the proposed model achieves state-of-the-art performance on three datasets, including StanWiFi (99.9%), MultiEnv (98.0%), and the MINE lab dataset (99.9%). These findings underscore the potential of the PA-CSI model to advance Wi-Fi-based HAR in real-world applications. 25 4 Khoa Công nghệ Thông tin 3 Thái Duy Quý 2025-07-14T07:14:35Z 2025-07-14T07:14:35Z 2025-02-09 Journal article Bài báo đăng trên tạp chí thuộc ISI, bao gồm book chapter https://scholar.dlu.edu.vn/handle/123456789/5040 10.3390/s25041038 https://www.mdpi.com/1424-8220/25/4/1038 en Sensors (Basel, Switzerland) |
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Thư viện Trường Đại học Đà Lạt |
collection |
Thư viện số |
language |
English |
topic |
Wi-Fi sensing; channel state information (CSI); gate residual network; human activity recognition (HAR); multi-head attention; multi-scale convolutional neural networks; phase and amplitude |
spellingShingle |
Wi-Fi sensing; channel state information (CSI); gate residual network; human activity recognition (HAR); multi-head attention; multi-scale convolutional neural networks; phase and amplitude Thai Duy Quy Lin, Chih-Yang Shih, Timothy K Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
description |
Wi-Fi-based human activity recognition (HAR) is a non-intrusive and privacy-preserving method that leverages Channel State Information (CSI) for identifying human activities. However, existing approaches often struggle with robust feature extraction, especially in dynamic and multi-environment scenarios, and fail to effectively integrate amplitude and phase features of CSI. This study proposes a novel model, the Phase-Amplitude Channel State Information Network (PA-CSI), to address these challenges. The model introduces two key innovations: (1) a dual-feature approach combining amplitude and phase features for enhanced robustness, and (2) an attention-enhanced feature fusion mechanism incorporating multi-scale convolutional layers and Gated Residual Networks (GRN) to optimize feature extraction. Experimental results demonstrate that the proposed model achieves state-of-the-art performance on three datasets, including StanWiFi (99.9%), MultiEnv (98.0%), and the MINE lab dataset (99.9%). These findings underscore the potential of the PA-CSI model to advance Wi-Fi-based HAR in real-world applications. |
format |
Journal article |
author |
Thai Duy Quy Lin, Chih-Yang Shih, Timothy K |
author_facet |
Thai Duy Quy Lin, Chih-Yang Shih, Timothy K |
author_sort |
Thai Duy Quy |
title |
Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
title_short |
Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
title_full |
Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
title_fullStr |
Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
title_full_unstemmed |
Enhanced Human Activity Recognition Using Wi-Fi Sensing: Leveraging Phase and Amplitude with Attention Mechanisms |
title_sort |
enhanced human activity recognition using wi-fi sensing: leveraging phase and amplitude with attention mechanisms |
publishDate |
2025 |
url |
https://scholar.dlu.edu.vn/handle/123456789/5040 https://www.mdpi.com/1424-8220/25/4/1038 |
_version_ |
1845408551158153216 |