UrbanIng-V2X: A Large-Scale Multi-Vehicle, Multi-Infrastructure Dataset Across Multiple Intersections for Cooperative Perception
Karthikeyan Chandra Sekaran, Markus Geisler, Dominik R\"o{\ss}le, Adithya Mohan, Daniel Cremers, Wolfgang Utschick, Michael Botsch, Werner Huber, Torsten Sch\"on

TL;DR
UrbanIng-V2X is a large-scale, multi-intersection dataset capturing vehicle and infrastructure sensor data for cooperative perception, enabling more robust and diverse benchmarking of smart mobility algorithms.
Contribution
It introduces the first comprehensive multi-vehicle, multi-infrastructure dataset across multiple intersections, supporting diverse cooperative perception research.
Findings
Provides 712k annotated 3D object instances
Enables evaluation of state-of-the-art perception methods
Supports benchmarking across diverse urban scenarios
Abstract
Recent cooperative perception datasets have played a crucial role in advancing smart mobility applications by enabling information exchange between intelligent agents, helping to overcome challenges such as occlusions and improving overall scene understanding. While some existing real-world datasets incorporate both vehicle-to-vehicle and vehicle-to-infrastructure interactions, they are typically limited to a single intersection or a single vehicle. A comprehensive perception dataset featuring multiple connected vehicles and infrastructure sensors across several intersections remains unavailable, limiting the benchmarking of algorithms in diverse traffic environments. Consequently, overfitting can occur, and models may demonstrate misleadingly high performance due to similar intersection layouts and traffic participant behavior. To address this gap, we introduce UrbanIng-V2X, the first…
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