ITSC 2025 Paper Abstract

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Paper WE-EA-T12.3

Kojima, Haruki (Nagoya University), Honda, Kohei (Nagoya University), Okuda, Hiroyuki (Nagoya University), Suzuki, Tatsuya (Nagoya University)

Real-Time Model Predictive Control of Vehicles with Convex-Polygon-Aware Collision Avoidance in Tight Spaces

Scheduled for presentation during the Regular Session "S12b-Safety and Risk Assessment for Autonomous Driving Systems" (WE-EA-T12), Wednesday, November 19, 2025, 14:10−14:30, Broadbeach 3

2025 IEEE 28th International Conference on Intelligent Transportation Systems (ITSC), November 18-21, 2025, Gold Coast, Australia

This information is tentative and subject to change. Compiled on October 19, 2025

Keywords Autonomous Vehicle Safety and Performance Testing, Real-time Motion Planning and Control for Autonomous Vehicles in ITS Networks, Energy-efficient Motion Control for Autonomous Vehicles

Abstract

This paper proposes vehicle motion planning methods with obstacle avoidance in tight spaces by incorporating polygonal approximations of both the vehicle and obstacles into a model predictive control (MPC) framework. Representing these shapes is crucial for navigation in tight spaces to ensure accurate collision detection. However, incorporating polygonal approximations leads to disjunctive OR constraints in the MPC formulation, which require mixed integer programming and cause significant computational cost. To overcome this, we propose two different collision-avoidance constraints that reformulate the disjunctive OR constraints as tractable conjunctive AND constraints: (1) a Support Vector Machine (SVM)-based formulation that recasts collision avoidance as a SVM optimization problem, and (2) a Minimum Signed Distance to Edges (MSDE) formulation that leverages minimum signed-distance metrics. We validate both methods through extensive simulations, including tight-space parking scenarios and varied-shape obstacle courses, as well as hardware experiments on an RC-car platform. Our results demonstrate that the SVM-based approach achieves superior navigation accuracy in constrained environments; the MSDE approach, by contrast, runs in real time with only a modest reduction in collision-avoidance performance.

 

 

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