Mobile Traffic Camera Calibration from Road Geometry for UAV-Based Traffic Surveillance
Alexey Popov, Natalia Trukhina, Vadim Vashkelis

TL;DR
This paper introduces a lightweight method to convert monocular UAV traffic videos into a metric bird's-eye view using road geometry, enabling traffic analysis similar to fixed cameras.
Contribution
A novel pipeline that estimates road-plane homography from UAV footage to produce accurate BEV traffic analytics, improving UAV-based traffic monitoring capabilities.
Findings
Successfully produces 3D vehicle trajectories and cuboids from UAV footage.
Calibration accuracy is affected by far-field vehicle distance and non-planar roads.
Manual validation currently outperforms automatic calibration in reliability.
Abstract
Unmanned aerial vehicles (UAVs) can provide flexible traffic surveillance where fixed roadside cameras are unavailable, costly, or impractical. However, raw UAV video is difficult to use for traffic analytics because vehicle motion is observed in perspective image coordinates rather than in a stable metric road coordinate system. This paper presents a lightweight pipeline for converting monocular oblique UAV traffic video into a local metric bird's-eye-view (BEV) representation. Visible road geometry, including lane markings, road borders, and crosswalks, is used to estimate a road-plane homography from image coordinates to metric ground-plane coordinates. Vehicle observations from dataset annotations or detectors are then projected to BEV using estimated ground contact points. The resulting trajectories support estimation of vehicle direction, speed, heading, and dynamic 3D cuboids on…
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