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📄 Abstract
Abstract: Accurate 3D trajectory data is crucial for advancing autonomous driving. Yet,
traditional datasets are usually captured by fixed sensors mounted on a car and
are susceptible to occlusion. Additionally, such an approach can precisely
reconstruct the dynamic environment in the close vicinity of the measurement
vehicle only, while neglecting objects that are further away. In this paper, we
introduce the DeepScenario Open 3D Dataset (DSC3D), a high-quality,
occlusion-free dataset of 6 degrees of freedom bounding box trajectories
acquired through a novel monocular camera drone tracking pipeline. Our dataset
includes more than 175,000 trajectories of 14 types of traffic participants and
significantly exceeds existing datasets in terms of diversity and scale,
containing many unprecedented scenarios such as complex vehicle-pedestrian
interaction on highly populated urban streets and comprehensive parking
maneuvers from entry to exit. DSC3D dataset was captured in five various
locations in Europe and the United States and include: a parking lot, a crowded
inner-city, a steep urban intersection, a federal highway, and a suburban
intersection. Our 3D trajectory dataset aims to enhance autonomous driving
systems by providing detailed environmental 3D representations, which could
lead to improved obstacle interactions and safety. We demonstrate its utility
across multiple applications including motion prediction, motion planning,
scenario mining, and generative reactive traffic agents. Our interactive online
visualization platform and the complete dataset are publicly available at
https://app.deepscenario.com, facilitating research in motion prediction,
behavior modeling, and safety validation.