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Hints of Prompt: Enhancing Visual Representation for Multimodal LLMs in Autonomous Driving

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In light of the dynamic nature of autonomous driving environments and stringent safety requirements, general MLLMs combined with CLIP alone often struggle to accurately represent driving-specific scenarios, particularly in complex interactions and long-tail cases. To address this, we propose the Hints of Prompt (HoP) framework, which introduces three key enhancements: Affinity hint to emphasize instance-level structure by strengthening token-wise connections, Semantic hint to incorporate high-level information relevant to driving-specific cases, such as complex interactions among vehicles and traffic signs, and Question hint to align visual features with the query context, focusing on question-relevant regions. These hints are fused through a Hint Fusion module, enriching visual representations by capturing driving-related representations with limited domain data, ensuring faster adaptation to driving scenarios. Extensive experiments confirm the effectiveness of the HoP framework, showing that it significantly outperforms previous state-of-the-art methods in all key metrics.

Hao Zhou, Zhanning Gao, Zhili Chen, Maosheng Ye, Qifeng Chen, Tongyi Cao, Honggang Qi• 2024

Related benchmarks

TaskDatasetResultRank
Driving ReasoningBDD-X Medium
BLEU-418
6
Driving ReasoningBDD-X Hard
BLEU-413
6
Driving ReasoningBDD-X (All)
BLEU-40.179
6
Driving ReasoningBDD-X Easy
BLEU-40.201
6
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