WLAN Indoor Intrusion Detection Based on Deep Signal Feature Fusion and Minimized-MKMMD Transfer Learning
M. Zhou (1), X. Li (1), Y. Wang (1), A. Ren (1), X. Yang (1) ((1), Chongqing University of Posts, Telecommunications)

TL;DR
This paper introduces a novel WLAN indoor intrusion detection approach that combines deep signal feature fusion with minimized-MKMMD transfer learning to enhance accuracy and robustness in complex indoor environments.
Contribution
It proposes a deep neural network-based feature fusion method combined with minimized-MKMMD for effective transfer learning in WLAN intrusion detection.
Findings
Improved detection accuracy in indoor environments
Enhanced robustness against signal instability
Effective transfer learning across different environments
Abstract
Indoor intrusion detection technology has been widely utilized in network security monitoring, smart city, entertainment games, and other fields. Most existing indoor intrusion detection methods directly exploit the Received Signal Strength (RSS) data collected by Monitor Points (MPs) and do not consider the instability of WLAN signals in the complex indoor environments. In response to this urgent problem, this paper proposes a novel WLAN indoor intrusion detection method based on deep signal feature fusion and Minimized Multiple Kernel Maximum Mean Discrepancy (Minimized-MKMMD). Firstly, the multi-branch deep convolutional neural network is used to conduct the dimensionality reduction and feature fusion of the RSS data, and the tags are obtained according to the features of the offline and online RSS fusion features that are corresponding to the silence and intrusion states, and then…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Speech and Audio Processing · Anomaly Detection Techniques and Applications
