CVLGROSPNov 18, 2019

The inD Dataset: A Drone Dataset of Naturalistic Road User Trajectories at German Intersections

arXiv:1911.07602v1471 citations
Originality Synthesis-oriented
AI Analysis

This dataset addresses the need for large-scale, high-quality urban trajectory data for automated vehicle research, though it is incremental as a successor to the highD dataset.

The authors tackled the lack of public datasets for urban road user trajectories by creating the inD dataset, which includes over 11,500 naturalistic trajectories of vehicles, bicyclists, and pedestrians from 10 hours of drone footage at German intersections.

Automated vehicles rely heavily on data-driven methods, especially for complex urban environments. Large datasets of real world measurement data in the form of road user trajectories are crucial for several tasks like road user prediction models or scenario-based safety validation. So far, though, this demand is unmet as no public dataset of urban road user trajectories is available in an appropriate size, quality and variety. By contrast, the highway drone dataset (highD) has recently shown that drones are an efficient method for acquiring naturalistic road user trajectories. Compared to driving studies or ground-level infrastructure sensors, one major advantage of using a drone is the possibility to record naturalistic behavior, as road users do not notice measurements taking place. Due to the ideal viewing angle, an entire intersection scenario can be measured with significantly less occlusion than with sensors at ground level. Both the class and the trajectory of each road user can be extracted from the video recordings with high precision using state-of-the-art deep neural networks. Therefore, we propose the creation of a comprehensive, large-scale urban intersection dataset with naturalistic road user behavior using camera-equipped drones as successor of the highD dataset. The resulting dataset contains more than 11500 road users including vehicles, bicyclists and pedestrians at intersections in Germany and is called inD. The dataset consists of 10 hours of measurement data from four intersections and is available online for non-commercial research at: http://www.inD-dataset.com

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