nuReasoning: A Reasoning-Centric Dataset and Benchmark for Long-Tail Autonomous Driving 文章

ArXiv CS.CV2026-06-01NEWSen作者: Zhiyu Huang (Xuewei), Johnson Liu (Xuewei), Rui Song (Xuewei), Zewei Zhou (Xuewei), Ruining Yang (Xuewei), Yun Zhang (Xuewei), Tianhui Cai (Xuewei), Hanyin Zhang (Xuewei), Mingxuan Gao (Xuewei), Valeria Xu (Xuewei), Jiali Chen (Xuewei), Yishan Shen (Xuewei), Yiluan Guo (Xuewei), Tony (Xuewei), Qi, Jiaqi Ma

摘要

arXiv:2605.31572v1 Announce Type: new Abstract: Reasoning is essential for autonomous driving (AD) in long-tail scenarios, where vehicles must apply commonsense knowledge, understand spatial relations, infer agent interactions, and make safe decisions. However, existing AD datasets and benchmarks mainly target perception, prediction, or planning, and provide limited supervision for reasoning over realistic long-tail driving scenes. We introduce nuReasoning, a large-scale real-world dataset and benchmark for reasoning-centric AD. Following the lineage of nuScenes and nuPlan, nuReasoning advances real-world AD datasets and benchmarks toward reasoning in long-tail driving scenarios. The dataset contains 20,000 clips, each 20 seconds long, collected across multiple cities, with synchronized multi-camera images, LiDAR data, HD maps, object annotations, and human-verified reasoning annotations spanning Spatial Reasoning, Decision Reasoning, and Counterfactual Reasoning.