Publication | Open Access
An Anti-UAV Long-Term Tracking Method with Hybrid Attention Mechanism and Hierarchical Discriminator
18
Citations
31
References
2022
Year
Siamese NetworkEngineeringMachine LearningUnmanned VehicleImage AnalysisUav TargetsPattern RecognitionUnmanned SystemObject TrackingUnmanned Aerial VehiclesMachine VisionAutomatic Target RecognitionObject DetectionHybrid Attention MechanismMoving Object TrackingComputer ScienceDeep LearningComputer VisionHierarchical DiscriminatorAerospace EngineeringEye TrackingUav ObjectsUnmanned Aerial SystemsTracking System
To prevent unmanned aerial vehicles (UAVs) from threatening public security, anti-UAV object tracking has become a critical issue in industrial and military applications. However, tracking UAV objects stably is still a challenging issue because the scenarios are complicated and the targets are generally small. In this article, a novel long-term tracking architecture composed of a Siamese network and re-detection (SiamAD) is proposed to efficiently locate UAV targets in diverse surroundings. Specifically, a new hybrid attention mechanism module is exploited to conduct more discriminative feature representation and is incorporated into a Siamese network. At the same time, the attention-based Siamese network fuses multilevel features for accurately tracking the target. We further introduce a hierarchical discriminator for checking the reliability of targeting, and a discriminator-based redetection network is utilized for correcting tracking failures. To effectively catch up with the appearance changes of UAVs, a template updating strategy is developed in long-term tracking tasks. Our model surpasses many state-of-the-art models on the anti-UAV benchmark. In particular, the proposed method can achieve 13.7% and 16.5% improvements in success rate and precision rate, respectively, compared with the strong baseline SiamRPN++.
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