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DriveLM: Driving with Graph Visual Question Answering

About

We study how vision-language models (VLMs) trained on web-scale data can be integrated into end-to-end driving systems to boost generalization and enable interactivity with human users. While recent approaches adapt VLMs to driving via single-round visual question answering (VQA), human drivers reason about decisions in multiple steps. Starting from the localization of key objects, humans estimate object interactions before taking actions. The key insight is that with our proposed task, Graph VQA, where we model graph-structured reasoning through perception, prediction and planning question-answer pairs, we obtain a suitable proxy task to mimic the human reasoning process. We instantiate datasets (DriveLM-Data) built upon nuScenes and CARLA, and propose a VLM-based baseline approach (DriveLM-Agent) for jointly performing Graph VQA and end-to-end driving. The experiments demonstrate that Graph VQA provides a simple, principled framework for reasoning about a driving scene, and DriveLM-Data provides a challenging benchmark for this task. Our DriveLM-Agent baseline performs end-to-end autonomous driving competitively in comparison to state-of-the-art driving-specific architectures. Notably, its benefits are pronounced when it is evaluated zero-shot on unseen objects or sensor configurations. We hope this work can be the starting point to shed new light on how to apply VLMs for autonomous driving. To facilitate future research, all code, data, and models are available to the public.

Chonghao Sima, Katrin Renz, Kashyap Chitta, Li Chen, Hanxue Zhang, Chengen Xie, Jens Bei{\ss}wenger, Ping Luo, Andreas Geiger, Hongyang Li• 2023

Related benchmarks

TaskDatasetResultRank
Closed-loop Autonomous DrivingBench2Drive closed-loop
DS97
24
End-to-end PlanningnuScenes--
19
End-to-end DrivingCARLA Bench2Drive v1 (test)
Driving Score97
11
End-to-end DrivingCARLA Longest6 v2 (test)
Driving Score73
11
Autonomous driving reasoning (cross-view risk object perception, action prediction, and planning)DriveLM
Accuracy52.3
10
Visual Question AnsweringDriveLM
BLEU-453.09
8
Drive VQADriveBench
Perception Score16.85
7
Graph Visual Question AnsweringDriveLM GVQA
Accuracy0.00e+0
7
Language UnderstandingDriveLM
BLEU-453.09
6
Generative Question AnsweringDriveLM (test)
BLEU-453.09
5
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