eTraM: Event-based Traffic Monitoring Dataset
- URL: http://arxiv.org/abs/2403.19976v2
- Date: Tue, 2 Apr 2024 06:03:32 GMT
- Title: eTraM: Event-based Traffic Monitoring Dataset
- Authors: Aayush Atul Verma, Bharatesh Chakravarthi, Arpitsinh Vaghela, Hua Wei, Yezhou Yang,
- Abstract summary: We present eTraM, a first-of-its-kind, fully event-based traffic monitoring dataset.
eTraM offers 10 hr of data from different traffic scenarios in various lighting and weather conditions.
It covers eight distinct classes of traffic participants, ranging from vehicles to pedestrians and micro-mobility.
- Score: 23.978331129798356
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Event cameras, with their high temporal and dynamic range and minimal memory usage, have found applications in various fields. However, their potential in static traffic monitoring remains largely unexplored. To facilitate this exploration, we present eTraM - a first-of-its-kind, fully event-based traffic monitoring dataset. eTraM offers 10 hr of data from different traffic scenarios in various lighting and weather conditions, providing a comprehensive overview of real-world situations. Providing 2M bounding box annotations, it covers eight distinct classes of traffic participants, ranging from vehicles to pedestrians and micro-mobility. eTraM's utility has been assessed using state-of-the-art methods for traffic participant detection, including RVT, RED, and YOLOv8. We quantitatively evaluate the ability of event-based models to generalize on nighttime and unseen scenes. Our findings substantiate the compelling potential of leveraging event cameras for traffic monitoring, opening new avenues for research and application. eTraM is available at https://eventbasedvision.github.io/eTraM
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