cs.AI updates on arXiv.org 07月08日 14:58
Pedestrian Intention Prediction via Vision-Language Foundation Models
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本文研究利用视觉语言基础模型(VLFMs)预测行人过街意图,通过整合多模态数据,提高预测准确率,为自动驾驶应用提供更优解。

arXiv:2507.04141v1 Announce Type: cross Abstract: Prediction of pedestrian crossing intention is a critical function in autonomous vehicles. Conventional vision-based methods of crossing intention prediction often struggle with generalizability, context understanding, and causal reasoning. This study explores the potential of vision-language foundation models (VLFMs) for predicting pedestrian crossing intentions by integrating multimodal data through hierarchical prompt templates. The methodology incorporates contextual information, including visual frames, physical cues observations, and ego-vehicle dynamics, into systematically refined prompts to guide VLFMs effectively in intention prediction. Experiments were conducted on three common datasets-JAAD, PIE, and FU-PIP. Results demonstrate that incorporating vehicle speed, its variations over time, and time-conscious prompts significantly enhances the prediction accuracy up to 19.8%. Additionally, optimised prompts generated via an automatic prompt engineering framework yielded 12.5% further accuracy gains. These findings highlight the superior performance of VLFMs compared to conventional vision-based models, offering enhanced generalisation and contextual understanding for autonomous driving applications.

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VLFMs 行人过街意图预测 自动驾驶 多模态数据
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