AI in Autonomous Vehicles: Advancements and Challenges

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Prof. Kumar Singh

Abstract

Autonomous vehicles rely heavily on AI for navigation, decision-making, and safety. This paper reviews the latest advancements in AI for autonomous vehicles, focusing on areas such as computer vision, sensor fusion, and reinforcement learning. We also discuss the challenges in ensuring safety, reliability, and ethical decision-making in autonomous driving.

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AI in Autonomous Vehicles: Advancements and Challenges. (2023). Research-Gate Journal, 9(9). https://research-gate.in/index.php/Rgj/article/view/34
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How to Cite

AI in Autonomous Vehicles: Advancements and Challenges. (2023). Research-Gate Journal, 9(9). https://research-gate.in/index.php/Rgj/article/view/34

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