Validation of object detection in UAV-based images using synthetic data
Eung-Joo Lee, Damon M. Conover, Shuvra S. Bhattacharyyaa, Heesung, Kwon, Jason Hill, Kenneth Evensen

TL;DR
This paper investigates how UAV imaging conditions affect object detection accuracy by using synthetic data to analyze model performance across various camera angles, poses, and lighting scenarios.
Contribution
It introduces a synthetic data generation approach to systematically evaluate the impact of UAV imaging parameters on object detection models, identifying boundary conditions of model robustness.
Findings
Detection accuracy drops near nadir-view angles.
Object pose significantly affects detection performance.
Illumination variations influence model robustness.
Abstract
Object detection is increasingly used onboard Unmanned Aerial Vehicles (UAV) for various applications; however, the machine learning (ML) models for UAV-based detection are often validated using data curated for tasks unrelated to the UAV application. This is a concern because training neural networks on large-scale benchmarks have shown excellent capability in generic object detection tasks, yet conventional training approaches can lead to large inference errors for UAV-based images. Such errors arise due to differences in imaging conditions between images from UAVs and images in training. To overcome this problem, we characterize boundary conditions of ML models, beyond which the models exhibit rapid degradation in detection accuracy. Our work is focused on understanding the impact of different UAV-based imaging conditions on detection performance by using synthetic data generated…
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