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ICCV 2025「端到端自动驾驶」冠军方案分享!
自动驾驶之心· 2025-10-29 00:04
Core Insights - The article highlights the victory of Inspur's AI team in the Autonomous Grand Challenge 2025, where they achieved a score of 53.06 in the end-to-end autonomous driving track using their innovative framework "SimpleVSF" [2][7][13] - The framework integrates bird's-eye view perception trajectory prediction with a vision-language multimodal model, enhancing decision-making capabilities in complex traffic scenarios [2][5][8] Summary by Sections Competition Overview - The ICCV 2025 Autonomous Driving Challenge is a significant international event focusing on autonomous driving and embodied intelligence, featuring three main tracks [4] - The end-to-end driving challenge evaluates trajectory prediction and behavior planning using a data-driven simulation framework, emphasizing safety and efficiency across nine key metrics [4] Technical Challenges - End-to-end autonomous driving aims to reduce errors and information loss from traditional modular approaches, yet struggles with decision-making in complex real-world scenarios [5] - Current methods can identify basic elements but fail to understand higher-level semantics and situational awareness, leading to suboptimal decisions [5] Innovations in SimpleVSF Framework - The SimpleVSF framework bridges the gap between traditional trajectory planning and semantic understanding through a vision-language model (VLM) [7][8] - The VLM-enhanced scoring mechanism improves decision quality and scene adaptability, resulting in a 2% performance increase for single models and up to 6% in fusion decision-making [8][11] Decision-Making Mechanism - The dual fusion decision mechanism combines quantitative and qualitative assessments, ensuring optimal trajectory selection based on both numerical and semantic criteria [10][11] - The framework employs advanced models for generating diverse candidate trajectories and extracting robust environmental features, enhancing overall system performance [13] Achievements and Future Directions - The SimpleVSF framework's success in the challenge sets a new benchmark for end-to-end autonomous driving technology, supporting further advancements in the field [13] - Inspur's AI team aims to leverage their algorithmic and computational strengths to drive innovation in autonomous driving technology [13]