A Review on AI-Driven Approaches for Autonomous Vehicles: Progress and Challenges

Authors

  • Rui Zhang Author

DOI:

https://doi.org/10.61173/70tgsh90

Keywords:

Self-Driving, Artificial Intelligence, Sensor Integration, Autonomous Driving Decision Systems

Abstract

The rapid advancement of artificial intelligence has significantly propelled the development of autonomous vehicles, transforming both technological frameworks and practical applications. This paper systematically examines AI-driven approaches in autonomous vehicle systems, focusing on recent breakthroughs and persistent challenges. In perception systems, multi-sensor fusion and few-shot learning techniques have markedly enhanced object detection accuracy, while hierarchical reinforcement learning and socially compliant models have improved decision-making capabilities. Innovations in control systems, particularly the integration of model predictive control with neural-symbolic methods, demonstrate promising results in real-world scenarios. However, critical challenges remain, including performance degradation in extreme weather conditions, unresolved ethical and regulatory dilemmas regarding liability, and public skepticism toward human-machine interaction. The analysis highlights the necessity for explainable AI frameworks and real-time causal reasoning to address these issues. Future research directions emphasize the importance of cross-domain collaboration involving vehicle-road-cloud systems to achieve robust and trustworthy autonomous driving solutions. This review provides a comprehensive perspective on the current state of AI in autonomous vehicles, offering insights for researchers and practitioners navigating this evolving field.

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Published

2025-08-26

Issue

Section

Articles