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VisioPath: Vision-Language Enhanced Model Predictive Control for Safe Autonomous Navigation in Mixed Traffic
Author(s) -
S. WANG,
P. TYPALDOS,
C. LI,
A. A. MALIKOPOULOS
Publication year - 2025
Publication title -
ieee open journal of control systems
Language(s) - English
Resource type - Magazines
eISSN - 2694-085X
DOI - 10.1109/ojcsys.2025.3620149
Subject(s) - robotics and control systems
In this paper, we introduce VisioPath, a novel framework combining vision-language models (VLMs) with model predictive control (MPC) to enable safe autonomous driving in dynamic traffic environments. The proposed approach leverages a bird's-eye view video processing pipeline and zero-shot VLM capabilities to obtain structured information about surrounding vehicles, including their positions, dimensions, and velocitie, while providing semantically-informed initial trajectory guesses that warm-start the optimizer and enable contextually-aware navigation decisions (e.g., yielding to emergency vehicles). Using this rich perception output, we shape elliptical collisionavoidance potential fields around other traffic participants, which are seamlessly integrated into a finite-horizon optimal control problem for trajectory planning. The resulting trajectory optimization is solved via differential dynamic programming and is embedded in an event-triggered MPC loop. To ensure collision-free motion, a safety verification layer is incorporated in the framework that provides an assessment of potential unsafe trajectories. Extensive simulations in SUMO and CARLA simulators demonstrate that VisioPath outperforms other baseline approaches, such as conventional MPC, A*, RRT and CBF methods, across multiple metrics. By combining modern AI-driven perception with the rigorous foundation of optimal control, VisioPath represents a significant step forward in safe trajectory planning for complex traffic systems.

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