ROApr 1

Bench2Drive-VL: Benchmarks for Closed-Loop Autonomous Driving with Vision-Language Models

arXiv:2604.0125992.71 citationsh-index: 22Has Code
AI Analysis

This provides a more reliable validation method for autonomous driving researchers, though it is incremental as it extends existing benchmarks.

The paper tackles the lack of closed-loop evaluation for vision-language models in autonomous driving by introducing Bench2Drive-VL, a benchmark that generates diverse, behavior-grounded question-answer pairs in simulation, enabling assessment under out-of-distribution states and showing improved evaluation reliability.

With the rise of vision-language models (VLM), their application for autonomous driving (VLM4AD) has gained significant attention. Meanwhile, in autonomous driving, closed-loop evaluation has become widely recognized as a more reliable validation method than open-loop evaluation, as it can evaluate the performance of the model under cumulative errors and out-of-distribution inputs. However, existing VLM4AD benchmarks evaluate the model`s scene understanding ability under open-loop, i.e., via static question-answer (QA) dataset. This kind of evaluation fails to assess the VLMs performance under out-of-distribution states rarely appeared in the human collected datasets.To this end, we present Bench2Drive-VL, an extension of Bench2Drive that brings closed-loop evaluation to VLM-based driving, which introduces: (1) DriveCommenter, a closed-loop generator that automatically generates diverse, behavior-grounded question-answer pairs for all driving situations in CARLA,including severe off-route and off-road deviations previously unassessable in simulation. (2) A unified protocol and interface that allows modern VLMs to be directly plugged into the Bench2Drive closed-loop environment to compare with traditional agents. (3) A flexible reasoning and control framework, supporting multi-format visual inputs and configurable graph-based chain-of-thought execution. (4) A complete development ecosystem. Together, these components form a comprehensive closed-loop benchmark for VLM4AD. All codes and annotated datasets are open sourced.

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