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Vision-Based Anti-UAV Detection Based on YOLOv7-GS in Complex Backgrounds

Chunjuan Bo, Yuntao Wei, Xiujia Wang, Zhan Shi, Ying Xiao

2024Drones26 citationsDOIOpen Access PDF

Abstract

Unauthorized unmanned aerial vehicles (UAVs) pose threats to public safety and individual privacy. Traditional object-detection approaches often fall short during their application in anti-UAV technologies. To address this issue, we propose the YOLOv7-GS model, which is designed specifically for the identification of small UAVs in complex and low-altitude environments. This research primarily aims to improve the model’s detection capabilities for small UAVs in complex backgrounds. Enhancements were applied to the YOLOv7-tiny model, including adjustments to the sizes of prior boxes, incorporation of the InceptionNeXt module at the end of the neck section, and introduction of the SPPFCSPC-SR and Get-and-Send modules. These modifications aid in the preservation of details about small UAVs and heighten the model’s focus on them. The YOLOv7-GS model achieves commendable results on the DUT Anti-UAV and the Amateur Unmanned Air Vehicle Detection datasets and performs to be competitive against other mainstream algorithms.

Topics & Concepts

Computer scienceDroneAmateurFocus (optics)Object detectionIdentification (biology)Real-time computingArtificial intelligenceComputer visionComputer securityPattern recognition (psychology)PhysicsBiologyLawGeneticsPolitical scienceBotanyOpticsAdvanced Neural Network ApplicationsUAV Applications and OptimizationRobotics and Sensor-Based Localization
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