Continuously Learning, Adapting, and Improving: A Dual-Process Approach to Autonomous Driving

Neural Information Processing Systems 

Autonomous driving has advanced significantly due to sensors, machine learning, and artificial intelligence improvements. However, prevailing methods struggle with intricate scenarios and causal relationships, hindering adaptability and interpretability in varied environments. To address the above problems, we introduce LeapAD, a novel paradigm for autonomous driving inspired by the human cognitive process.

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