Listen, Look, Drive: Coupling Audio Instructions for User-aware VLA-based Autonomous Driving
Ziang Guo, Feng Yang, Xuefeng Zhang, Jiaqi Guo, Kun Zhao, Yixiao Zhou, Peng Lu, Sifa Zheng, Zufeng Zhang

TL;DR
EchoVLA introduces a multimodal system coupling visual and audio cues, including emotional speech, to improve autonomous driving decisions by incorporating user intentions and emotional context.
Contribution
This work presents EchoVLA, a novel multimodal VLA model that integrates audio instructions with emotional cues into autonomous driving, enhancing responsiveness and safety.
Findings
Reduces average L2 error by 59.4%
Decreases collision rate by 74.4%
Validates effectiveness on nuScenes dataset
Abstract
Vision Language Action (VLA) models promise an open-vocabulary interface that can translate perceptual ambiguity into semantically grounded driving decisions, yet they still treat language as a static prior fixed at inference time. As a result, the model must infer continuously shifting objectives from pixels alone, yielding delayed or overly conservative maneuvers. We argue that effective VLAs for autonomous driving need an online channel in which users can influence driving with specific intentions. To this end, we present EchoVLA, a user-aware VLA that couples camera streams with in situ audio instructions. We augment the nuScenes dataset with temporally aligned, intent-specific speech commands generated by converting ego-motion descriptions into synthetic audios. Further, we compose emotional speech-trajectory pairs into a multimodal Chain-of-Thought (CoT) for fine-tuning a…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Social Robot Interaction and HRI · Generative Adversarial Networks and Image Synthesis
