From Virtual Environments to Real-World Trials: Emerging Trends in Autonomous Driving
AI 摘要
该论文综述了自动驾驶中利用虚拟环境和合成数据进行训练、验证和迁移学习的最新进展。
主要贡献
- 全面回顾了自动驾驶、仿真技术和合成数据集的交叉发展
- 组织了感知、规划、系统验证和域自适应等多个维度的研究
- 分析了数据集、工具、仿真平台和基准设计的趋势
方法论
该论文采用综述的方式,整理、分类并分析了相关领域的文献,总结了现有方法和未来挑战。
原文摘要
Autonomous driving technologies have achieved significant advances in recent years, yet their real-world deployment remains constrained by data scarcity, safety requirements, and the need for generalization across diverse environments. In response, synthetic data and virtual environments have emerged as powerful enablers, offering scalable, controllable, and richly annotated scenarios for training and evaluation. This survey presents a comprehensive review of recent developments at the intersection of autonomous driving, simulation technologies, and synthetic datasets. We organize the landscape across three core dimensions: (i) the use of synthetic data for perception and planning, (ii) digital twin-based simulation for system validation, and (iii) domain adaptation strategies bridging synthetic and real-world data. We also highlight the role of vision-language models and simulation realism in enhancing scene understanding and generalization. A detailed taxonomy of datasets, tools, and simulation platforms is provided, alongside an analysis of trends in benchmark design. Finally, we discuss critical challenges and open research directions, including Sim2Real transfer, scalable safety validation, cooperative autonomy, and simulation-driven policy learning, that must be addressed to accelerate the path toward safe, generalizable, and globally deployable autonomous driving systems.