nuScenes Revisited: Progress and Challenges in Autonomous Driving
arXiv cs.RO / 3/25/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper revisits the nuScenes autonomous driving dataset, highlighting its role in shaping deep learning–driven AV development and the importance of large, well-labeled data.
- It reviews nuScenes’ distinguishing features, including radar inclusion, diverse urban scenes from two continents, collection via a fully autonomous vehicle on public roads, and emphasis on multi-modal sensor fusion and standardized benchmarks.
- The authors provide new, detailed insight into how nuScenes was created and describe its extensions, nuImages and Panoptic nuScenes.
- The work traces nuScenes’ broader influence on later datasets and community standards, and surveys official and unofficial tasks and major methodological developments using the dataset.
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