Saved in:
Bibliographic Details
Main Authors: Tian, Ye, Zhang, Jingyi, Wang, Zihao, Ren, Xiaoyuan, Yu, Xiaofan, Gungor, Onat, Rosing, Tajana
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.21029
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918401397489664
author Tian, Ye
Zhang, Jingyi
Wang, Zihao
Ren, Xiaoyuan
Yu, Xiaofan
Gungor, Onat
Rosing, Tajana
author_facet Tian, Ye
Zhang, Jingyi
Wang, Zihao
Ren, Xiaoyuan
Yu, Xiaofan
Gungor, Onat
Rosing, Tajana
contents Autonomous driving requires reliable reasoning over fine-grained 3D scene facts. Fine-grained question answering over multi-modal driving observations provides a natural way to evaluate this capability, yet existing perception pipelines and driving-oriented large language model (LLM) methods still suffer from unreliable scene facts, hallucinations, opaque reasoning, and heavy reliance on task-specific training. We present KLDrive, the first knowledge-graph-augmented LLM reasoning framework for fine-grained question answering in autonomous driving. KLDrive addresses this problem through designing two tightly coupled components: an energy-based scene fact construction module that consolidates multi-source evidence into a reliable scene knowledge graph, and an LLM agent that performs fact-grounded reasoning over a constrained action space under explicit structural constraints. By combining structured prompting with few-shot in-context exemplars, the framework adapts to diverse reasoning tasks without heavy task-specific fine-tuning. Experiments on two large-scale autonomous-driving QA benchmarks show that KLDrive outperforms prior state-of-the-art methods, achieving the best overall accuracy of 65.04% on NuScenes-QA and the best SPICE score of 42.45 on GVQA. On counting, the most challenging factual reasoning task, it improves over the strongest baseline by 46.01 percentage points, demonstrating substantially reduced hallucinations and the benefit of coupling reliable scene fact construction with explicit reasoning.
format Preprint
id arxiv_https___arxiv_org_abs_2603_21029
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle KLDrive: Fine-Grained 3D Scene Reasoning for Autonomous Driving based on Knowledge Graph
Tian, Ye
Zhang, Jingyi
Wang, Zihao
Ren, Xiaoyuan
Yu, Xiaofan
Gungor, Onat
Rosing, Tajana
Artificial Intelligence
Autonomous driving requires reliable reasoning over fine-grained 3D scene facts. Fine-grained question answering over multi-modal driving observations provides a natural way to evaluate this capability, yet existing perception pipelines and driving-oriented large language model (LLM) methods still suffer from unreliable scene facts, hallucinations, opaque reasoning, and heavy reliance on task-specific training. We present KLDrive, the first knowledge-graph-augmented LLM reasoning framework for fine-grained question answering in autonomous driving. KLDrive addresses this problem through designing two tightly coupled components: an energy-based scene fact construction module that consolidates multi-source evidence into a reliable scene knowledge graph, and an LLM agent that performs fact-grounded reasoning over a constrained action space under explicit structural constraints. By combining structured prompting with few-shot in-context exemplars, the framework adapts to diverse reasoning tasks without heavy task-specific fine-tuning. Experiments on two large-scale autonomous-driving QA benchmarks show that KLDrive outperforms prior state-of-the-art methods, achieving the best overall accuracy of 65.04% on NuScenes-QA and the best SPICE score of 42.45 on GVQA. On counting, the most challenging factual reasoning task, it improves over the strongest baseline by 46.01 percentage points, demonstrating substantially reduced hallucinations and the benefit of coupling reliable scene fact construction with explicit reasoning.
title KLDrive: Fine-Grained 3D Scene Reasoning for Autonomous Driving based on Knowledge Graph
topic Artificial Intelligence
url https://arxiv.org/abs/2603.21029