Geo-ORBIT: A Federated Digital Twin Framework for Scene-Adaptive Lane Geometry Detection
Rei Tamaru, Pei Li, and Bin Ran

TL;DR
Geo-ORBIT introduces a federated learning framework for real-time, privacy-preserving lane geometry detection in digital twins of transportation systems, improving scalability, adaptability, and accuracy across diverse urban scenes.
Contribution
The paper presents Geo-ORBIT, a novel federated meta-learning framework for dynamic lane detection that enhances scalability, privacy, and adaptability in digital twin transportation systems.
Findings
FedMeta-GeoLane reduces communication overhead significantly.
The framework achieves lower geometric error than baseline methods.
It generalizes well to unseen urban scenes.
Abstract
Digital Twins (DT) have the potential to transform traffic management and operations by creating dynamic, virtual representations of transportation systems that sense conditions, analyze operations, and support decision-making. A key component for DT of the transportation system is dynamic roadway geometry sensing. However, existing approaches often rely on static maps or costly sensors, limiting scalability and adaptability. Additionally, large-scale DTs that collect and analyze data from multiple sources face challenges in privacy, communication, and computational efficiency. To address these challenges, we introduce Geo-ORBIT (Geometrical Operational Roadway Blueprint with Integrated Twin), a unified framework that combines real-time lane detection, DT synchronization, and federated meta-learning. At the core of Geo-ORBIT is GeoLane, a lightweight lane detection model that learns…
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Taxonomy
TopicsTraffic control and management · Autonomous Vehicle Technology and Safety · Traffic Prediction and Management Techniques
MethodsProximal Policy Optimization · CARLA: An Open Urban Driving Simulator
