IDSDL: a sensitive intrusion detection system based on deep learning

Yanjun Hu, Fan Bai, Xuemiao Yang, Yafeng Liu
2021 EURASIP Journal on Wireless Communications and Networking  
AbstractDevice-free passive (DfP) intrusion detection system is a system that can detect moving entities without attaching any device to the entities. To achieve good performance, the existing algorithms require proper access point (AP) deployment. It limits the applying scenario of those algorithms. We propose an intrusion detection system based on deep learning (IDSDL) with finer-grained channel state information (CSI) to free the AP position. A CSI phase propagation components decomposition
more » ... lgorithm is applied to obtain blurred components of CSI phase on several paths as a more sensitive detection signal. Convolutional neuron network (CNN) of deep learning is used to enable the computer to learn and detect intrusion without extracting numerical features. We prototype IDSDL to verify its performance and the experimental results indicate that IDSDL is effective and reliable.
doi:10.1186/s13638-021-01900-y fatcat:46fu3fm7mbbitcmgdjmvqzia44