학술논문

Specific Radar Emitter Identification Using 1D-CBAM-ResNet
Document Type
Conference
Source
2022 14th International Conference on Wireless Communications and Signal Processing (WCSP) Wireless Communications and Signal Processing (WCSP), 2022 14th International Conference on. :483-488 Nov, 2022
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Photonics and Electrooptics
Signal Processing and Analysis
Wireless communication
Visualization
Convolution
Simulation
Buildings
Two dimensional displays
Radar
One-dimensional residual building units
One-dimensional convolutional block attention module
Specific radar emitter identification
Language
Abstract
With the development of the multifunction radar, the traditional specific emitter identification (SEI) can no longer meet the needs of the observe-orient-decide-act (OODA) closed loop, and most identification networks are in the process of converting one-dimensional (1D) radar emitter signals into two-dimensional (2D) signals to adapt the network input, which easily misses information. To address the above problems, this paper adopts a 1D convolutional residual neural network with the convolutional block attention module (1D-CBAM-ResNet) for automatic learning and single-step identification of 1D inter-mediate frequency (IF) signals to improve SEI accuracy. The model combines the 1D residual building unit (1D-RBV) with the 1D convolutional block attention module (1D-CBAM) to effectively aggregate channel and spatial information to accurately capture fingerprint features within the pulse. The simulation results demonstrate that the overall identification accuracy of the algorithm for 10 emitters of the same type reaches 93.03%, which proves the effectiveness and feasibility of the module.