DeepMV

Author:

Xue Hongfei1,Jiang Wenjun1,Miao Chenglin1,Ma Fenglong2,Wang Shiyang1,Yuan Ye3,Yao Shuochao4,Zhang Aidong5,Su Lu1

Affiliation:

1. State University of New York at Buffalo, Buffalo, NY, USA

2. Pennsylvania State University, University Park, PA, USA

3. JD Intelligent Cities Research, Beijing, China

4. University of Illinois Urbana-Champaign, Urbana, IL, USA

5. University of Virginia, Charlottesville, VA, USA

Abstract

Recently, significant efforts are made to explore device-free human activity recognition techniques that utilize the information collected by existing indoor wireless infrastructures without the need for the monitored subject to carry a dedicated device. Most of the existing work, however, focuses their attention on the analysis of the signal received by a single device. In practice, there are usually multiple devices "observing" the same subject. Each of these devices can be regarded as an information source and provides us an unique "view" of the observed subject. Intuitively, if we can combine the complementary information carried by the multiple views, we will be able to improve the activity recognition accuracy. Towards this end, we propose DeepMV, a unified multi-view deep learning framework, to learn informative representations of heterogeneous device-free data. DeepMV can combine different views' information weighted by the quality of their data and extract commonness shared across different environments to improve the recognition performance. To evaluate the proposed DeepMV model, we set up a testbed using commercialized WiFi and acoustic devices. Experiment results show that DeepMV can effectively recognize activities and outperform the state-of-the-art human activity recognition methods.

Funder

Division of Information and Intelligent Systems

Division of Computer and Network Systems

Office of Advanced Cyberinfrastructure

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference98 articles.

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1. NNE-Tracking: A Neural Network Enhanced Framework for Device-Free Wi-Fi Tracking;IEEE Transactions on Mobile Computing;2024-09

2. CDFi: Cross-Domain Action Recognition Using WiFi Signals;IEEE Transactions on Mobile Computing;2024-08

3. M4X: Enhancing Cross-View Generalizability in RF-Based Human Activity Recognition by Exploiting Synthetic Data in Metric Learning;2024 IEEE/ACM Conference on Connected Health: Applications, Systems and Engineering Technologies (CHASE);2024-06-19

4. Advancing Human Activity Recognition Using Ultra-Wideband Channel Impulse Response Snapshots;2024 International Conference on Activity and Behavior Computing (ABC);2024-05-29

5. WiFi2Radar: Orientation-Independent Single-Receiver WiFi Sensing via WiFi to Radar Translation;IEEE Internet of Things Journal;2024-05-01

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