Model-Agnostic Open-Set Air-to-Air Visual Object Detection for Reliable UAV Perception
By: Spyridon Loukovitis , Anastasios Arsenos , Vasileios Karampinis and more
Potential Business Impact:
Helps drones spot new things safely.
Open-set detection is crucial for robust UAV autonomy in air-to-air object detection under real-world conditions. Traditional closed-set detectors degrade significantly under domain shifts and flight data corruption, posing risks to safety-critical applications. We propose a novel, model-agnostic open-set detection framework designed specifically for embedding-based detectors. The method explicitly handles unknown object rejection while maintaining robustness against corrupted flight data. It estimates semantic uncertainty via entropy modeling in the embedding space and incorporates spectral normalization and temperature scaling to enhance open-set discrimination. We validate our approach on the challenging AOT aerial benchmark and through extensive real-world flight tests. Comprehensive ablation studies demonstrate consistent improvements over baseline methods, achieving up to a 10\% relative AUROC gain compared to standard YOLO-based detectors. Additionally, we show that background rejection further strengthens robustness without compromising detection accuracy, making our solution particularly well-suited for reliable UAV perception in dynamic air-to-air environments.
Similar Papers
Fast Post-Hoc Confidence Fusion for 3-Class Open-Set Aerial Object Detection
CV and Pattern Recognition
Helps drones spot new things, not just old ones.
Towards 3D Objectness Learning in an Open World
CV and Pattern Recognition
Finds any object in 3D, even new ones.
More Clear, More Flexible, More Precise: A Comprehensive Oriented Object Detection benchmark for UAV
CV and Pattern Recognition
Helps drones see and understand things better.