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DroneDAR: Long-Range Drone Distance Estimation Using Monocular Vision and Bounding-Box Features
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DroneDAR: Long-Range Drone Distance Estimation Using Monocular Vision and Bounding-Box Features

Knut Peterson, Zaid Mayers and David Han
ArXiv.org
05 Jun 2026
url
https://doi.org/10.48550/arXiv.2606.07756View
Preprint (Author's original) Open arXiv.org - Non-exclusive license to distribute

Abstract

Computer Science - Computer Vision and Pattern Recognition Computer Science - Robotics
Accurate distance estimation for small drones in long-range imagery is important for tracking and situational awareness, yet remains challenging due to extreme target scale variation, background clutter, and noisy visual cues. This paper studies monocular drone distance estimation using image crops together with bounding-box geometry, a practical setting in which a detector provides a candidate drone region and the model predicts range from appearance and box-derived features. We evaluate a Droneranger-style baseline, and introduce a new DroneDAR (Drone Detection And Ranging) model that combines a convolutional backbone with explicit bounding-box cues through a lightweight gating mechanism. Experiments analyze how backbone capacity, crop resolution, and regression loss functions affect performance across distance regimes. We further examine common failure modes at long distances, including sensitivity to bounding-box noise and reduced texture detail in the crop. The results provide guidance for designing and training range estimators that remain robust under real-world long-range conditions and highlight directions for improving reliability when drones occupy only a few pixels.

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