Multimodal Learning 相关度: 9/10

WeatherReasonSeg: A Benchmark for Weather-Aware Reasoning Segmentation in Visual Language Models

Wanjun Du, Zifeng Yuan, Tingting Chen, Fucai Ke, Beibei Lin, Shunli Zhang
arXiv: 2603.17680v1 发布: 2026-03-18 更新: 2026-03-18

AI 摘要

提出 WeatherReasonSeg 基准,评估 VLM 在恶劣天气下的推理分割能力。

主要贡献

  • 构建了可控的合成天气推理数据集,用于细粒度的鲁棒性分析
  • 构建了真实世界恶劣天气推理分割数据集,使用掩码引导的 LLM 提示生成语义一致的查询
  • 评估了 VLM 在不同天气条件下的推理分割性能,并揭示了不同天气类型的脆弱性

方法论

构建合成和真实世界的恶劣天气数据集,并评估 VLM 在这些数据集上的推理分割性能。

原文摘要

Existing vision-language models (VLMs) have demonstrated impressive performance in reasoning-based segmentation. However, current benchmarks are primarily constructed from high-quality images captured under idealized conditions. This raises a critical question: when visual cues are severely degraded by adverse weather conditions such as rain, snow, or fog, can VLMs sustain reliable reasoning segmentation capabilities? In response to this challenge, we introduce WeatherReasonSeg, a benchmark designed to evaluate VLM performance in reasoning-based segmentation under adverse weather conditions. It consists of two complementary components. First, we construct a controllable reasoning dataset by applying synthetic weather with varying severity levels to existing segmentation datasets, enabling fine-grained robustness analysis. Second, to capture real-world complexity, we curate a real-world adverse-weather reasoning segmentation dataset with semantically consistent queries generated via mask-guided LLM prompting. We further broaden the evaluation scope across five reasoning dimensions, including functionality, application scenarios, structural attributes, interactions, and requirement matching. Extensive experiments across diverse VLMs reveal two key findings: (1) VLM performance degrades monotonically with increasing weather severity, and (2) different weather types induce distinct vulnerability patterns. We hope WeatherReasonSeg will serve as a foundation for advancing robust, weather-aware reasoning.

标签

VLM 推理分割 恶劣天气 基准测试

arXiv 分类

cs.CV cs.AI