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Baseline models for the paper "A Tutorial on Generating RF Datasets for Training and Testing Baseline Deep Learning Detectors: Radar Detection in the 3.5 GHz CBRS Band"

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Baseline Deep Learning Detectors for Radar Detection in the 3.5 GHz CBRS Band


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Project Objective

This project aims to create a comprehensive framework for generating radio frequency (RF) datasets, designing deep learning (DL) detectors, and evaluating their detection performance using both simulated and experimental test data. The proposed tools and techniques are developed in the context of dynamic spectrum use for the 3.5 GHz Citizens Broadband Radio Service (CBRS), but they can be utilized and expanded for standardization of machine learned spectrum awareness technologies and methods.

Paper

Raied Caromi, Alex Lackpour, Kassem Kallas, Thao Nguyen and Michael Souryal, "Deep Learning for Radar Signal Detection in the 3.5 GHz CBRS Band," 2021 IEEE International Symposium on Dynamic Spectrum Access Networks (DySPAN), Dec. 2021, pp. 1-8

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Baseline models for the paper "A Tutorial on Generating RF Datasets for Training and Testing Baseline Deep Learning Detectors: Radar Detection in the 3.5 GHz CBRS Band"

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