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Specific Emitter Identification Based on Complex Fourier Neural Network

Xiong Zha, Huai Chen, Tianyun Li, Zhaoyang Qiu, Yiwei Feng

2021IEEE Communications Letters67 citationsDOI

Abstract

Specific emitter identification (SEI) is a well-established approach to providing precise target information for civilian and military applications. For most deep learning (DL) based SEI schemes, neural operators directly learn mappings from the raw baseband waveform or its transformed representation. Different from existing schemes, we propose a novel complex Fourier neural operator (CFNO) in this letter, which introduces a time and frequency domain attention mechanism. With the CFNO block, features are fully learned from different domain perspectives. We evaluate the proposed method based on the joint distortion model of the transmitter and compare it with several state-of-the-art SEI algorithms. Simulation results demonstrate its excellent performance, making the CFNO block a good candidate for extracting fingerprints.

Topics & Concepts

Computer scienceBasebandBlock (permutation group theory)Artificial neural networkFrequency domainWaveformTransmitterArtificial intelligenceFourier transformAlgorithmIdentification (biology)Domain (mathematical analysis)Representation (politics)Distortion (music)Pattern recognition (psychology)Channel (broadcasting)TelecommunicationsBandwidth (computing)MathematicsComputer visionPoliticsLawMathematical analysisRadarAmplifierGeometryBiologyBotanyPolitical scienceWireless Signal Modulation ClassificationAdvanced Photonic Communication SystemsRadar Systems and Signal Processing
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