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KnowVal: A Knowledge-Augmented and Value-Guided Autonomous Driving System

About

Visual-language reasoning, driving knowledge, and value alignment are essential for advanced autonomous driving systems. However, existing approaches largely rely on data-driven learning, making it difficult to capture the complex logic underlying decision-making through imitation or limited reinforcement rewards. To address this, we propose KnowVal, a new autonomous driving system that enables visual-language reasoning through the synergistic integration of open-world perception and knowledge retrieval. Specifically, we construct a comprehensive driving knowledge graph that encodes traffic laws, defensive driving principles, and ethical norms, complemented by an efficient LLM-based retrieval mechanism tailored for driving scenarios. Furthermore, we develop a human-preference dataset and train a Value Model to guide interpretable, value-aligned trajectory assessment. Experimental results show that our method substantially improves planning performance while remaining compatible with existing architectures. Notably, KnowVal achieves the lowest collision rate on nuScenes and state-of-the-art results on Bench2Drive.

Zhongyu Xia, Wenhao Chen, Yongtao Wang, Ming-Hsuan Yang• 2025

Related benchmarks

TaskDatasetResultRank
PlanningnuScenes v1.0-trainval (val)
ST-P3 L2 Error (1s)0.26
39
Closed-loop Autonomous DrivingBench2Drive
Driving Score (DS)88.42
21
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