Publication | Closed Access
RFDOA-Net: An Efficient ConvNet for RF-Based DOA Estimation in UAV Surveillance Systems
56
Citations
22
References
2021
Year
Wireless CommunicationsConvolutional Neural NetworkEngineeringRadio FrequencyLocation EstimationCollective Feature ExtractionLocalizationImage ClassificationImage AnalysisData ScienceUnmanned SystemRf-based Doa EstimationMachine VisionFeature LearningAutomatic Target RecognitionObject DetectionEfficient ConvnetMoving Object TrackingDeep LearningSignal ProcessingComputer VisionConvolution Neural NetworkRadarAerospace EngineeringTracking SystemUav Surveillance Systems
This paper presents a convolution neural network (CNN)-based direction of arrival (DOA) estimation method for radio frequency (RF) signals acquired by a nonuniform linear antenna array (NULA) in unmanned aerial vehicle (UAV) localization systems. The proposed deep CNN, namely RFDOA-Net, is designed with three primary processing modules, such as collective feature extraction, multi-scaling feature processing, and complexity-accuracy trade-off, to learn the multi-scale intrinsic characteristics for multi-class angle classification. In several specific modules, the regular convolutional and grouped convolutional layers are leveraged with different filter sizes to enrich diversified features and reduce network complexity besides adopting residual connection to prevent vanishing gradient. For performance evaluation, we generate a synthetic signal dataset for DOA estimation under the multipath propagation channel with the presence of additive noise, propagation attenuation and delay. In simulations, the effectiveness of RFDOA-Net is investigated comprehensively with various processing modules and antenna configurations. Compared with several state-of-the-art deep learning-based models, RFDOA-Net shows the superiority in terms of accuracy with over 94% accuracy at 5 dB signal-to-noise ratio (SNR) with cost-efficiency.
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