cs.AI updates on arXiv.org 10月03日
导航引导的早期退出框架提升自动驾驶感知推理效率
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本文提出了一种名为Nav-EE的导航引导早期退出框架,通过预计算特定任务退出层并在导航先验的基础上动态应用,在自动驾驶场景中显著降低了推理延迟,同时保持了与全推理相当的准确性。

arXiv:2510.01795v1 Announce Type: cross Abstract: Vision-Language Models (VLMs) are increasingly applied in autonomous driving for unified perception and reasoning, but high inference latency hinders real-time deployment. Early-exit reduces latency by terminating inference at intermediate layers, yet its task-dependent nature limits generalization across diverse scenarios. We observe that this limitation aligns with autonomous driving: navigation systems can anticipate upcoming contexts (e.g., intersections, traffic lights), indicating which tasks will be required. We propose Nav-EE, a navigation-guided early-exit framework that precomputes task-specific exit layers offline and dynamically applies them online based on navigation priors. Experiments on CODA, Waymo, and BOSCH show that Nav-EE achieves accuracy comparable to full inference while reducing latency by up to 63.9%. Real-vehicle integration with Autoware Universe further demonstrates reduced inference latency (600ms to 300ms), supporting faster decision-making in complex scenarios. These results suggest that coupling navigation foresight with early-exit offers a viable path toward efficient deployment of large models in autonomous systems. Code and data are available at our anonymous repository: https://anonymous.4open.science/r/Nav-EE-BBC4

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自动驾驶 视觉语言模型 推理延迟 早期退出
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