SURDS: Benchmarking Spatial Understanding and Reasoning in Driving Scenarios with Vision Language Models
–Neural Information Processing Systems
Accurate spatial reasoning in outdoor environments--covering geometry, object pose, and inter-object relationships--is fundamental to downstream tasks such as mapping, motion forecasting, and high-level planning in autonomous driving. We introduce SURDS, a large-scale benchmark designed to systematically evaluate the spatial reasoning capabilities of vision language models (VLMs). Built on the nuScenes dataset, SURDS comprises 41,080 vision-question-answer training instances and 9,250 evaluation samples, spanning six spatial categories: orientation, depth estimation, pixel-level localization, pairwise distance, lateral ordering, and front-behind relations.
Neural Information Processing Systems
Jun-14-2026, 00:36:20 GMT
- Technology: