Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Distilling Multi-modal Large Language Models for Autonomous Driving

About

Autonomous driving demands safe motion planning, especially in critical "long-tail" scenarios. Recent end-to-end autonomous driving systems leverage large language models (LLMs) as planners to improve generalizability to rare events. However, using LLMs at test time introduces high computational costs. To address this, we propose DiMA, an end-to-end autonomous driving system that maintains the efficiency of an LLM-free (or vision-based) planner while leveraging the world knowledge of an LLM. DiMA distills the information from a multi-modal LLM to a vision-based end-to-end planner through a set of specially designed surrogate tasks. Under a joint training strategy, a scene encoder common to both networks produces structured representations that are semantically grounded as well as aligned to the final planning objective. Notably, the LLM is optional at inference, enabling robust planning without compromising on efficiency. Training with DiMA results in a 37% reduction in the L2 trajectory error and an 80% reduction in the collision rate of the vision-based planner, as well as a 44% trajectory error reduction in longtail scenarios. DiMA also achieves state-of-the-art performance on the nuScenes planning benchmark.

Deepti Hegde, Rajeev Yasarla, Hong Cai, Shizhong Han, Apratim Bhattacharyya, Shweta Mahajan, Litian Liu, Risheek Garrepalli, Vishal M. Patel, Fatih Porikli• 2025

Related benchmarks

TaskDatasetResultRank
Open-loop planningnuScenes (val)
L2 Error (3s)1.01
151
PlanningnuScenes (val)
Collision Rate (Avg)6
52
PlanningnuScenes 3-point turn
Trajectory L2 Error (1s)0.28
12
PlanningnuScenes resume from stop
L2 Error (1s)0.15
12
Autonomous Driving PlanningnuScenes Overtake scenario v1.0 (val)
Trajectory L2 Error (1s)0.24
8
PlanningnuScenes 3-point turn scenario long-tail v1.0 (val)
L2 Error (1s)0.36
5
PlanningnuScenes Overtake scenario long-tail v1.0 (val)
L2 Error (1s)0.24
5
PlanningnuScenes Resume from stop scenario long-tail v1.0 (val)
L2 Error (1s)0.15
5
PlanningnuScenes overtake
Trajectory L2 Error (1s)0.28
4
Showing 9 of 9 rows

Other info

Follow for update