CVMar 10

Probing the Reliability of Driving VLMs: From Inconsistent Responses to Grounded Temporal Reasoning

arXiv:2603.09512v117.21 citationsh-index: 2
Predicted impact top 55% in CV · last 90 daysOriginality Incremental advance
AI Analysis

It addresses reliability problems for autonomous driving systems, but is incremental as it builds on existing evaluation methods and focuses on specific challenges.

The paper investigates the reliability of Vision-Language Models (VLMs) as driving assistants, finding issues with response inconsistency and limited temporal reasoning, and proposes a self-supervised tuning method that improves performance on these tasks.

A reliable driving assistant should provide consistent responses based on temporally grounded reasoning derived from observed information. In this work, we investigate whether Vision-Language Models (VLMs), when applied as driving assistants, can response consistantly and understand how present observations shape future outcomes, or whether their outputs merely reflect patterns memorized during training without temporally grounded reasoning. While recent efforts have integrated VLMs into autonomous driving, prior studies typically emphasize scene understanding and instruction generation, implicitly assuming that strong visual interpretation naturally enables consistant future reasoning and thus ensures reliable decision-making, a claim we critically examine. We focus on two major challenges limiting VLM reliability in this setting: response inconsistency, where minor input perturbations yield different answers or, in some cases, responses degenerate toward near-random guessing, and limited temporal reasoning, in which models fail to reason and align sequential events from current observations, often resulting in incorrect or even contradictory responses. Moreover, we find that models with strong visual understanding do not necessarily perform best on tasks requiring temporal reasoning, indicating a tendency to over-rely on pretrained patterns rather than modeling temporal dynamics. To address these issues, we adopt existing evaluation methods and introduce FutureVQA, a human-annotated benchmark dataset specifically designed to assess future scene reasoning. In addition, we propose a simple yet effective self-supervised tuning approach with chain-of-thought reasoning that improves both consistency and temporal reasoning without requiring temporal labels.

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