LeapVAD: A Leap in Autonomous Driving via Cognitive Perception and Dual-Process Thinking
Yukai Ma, Tiantian Wei, Naiting Zhong, Jianbiao Mei, Tao Hu, Licheng, Wen, Xuemeng Yang, Botian Shi, Yong Liu

TL;DR
LeapVAD introduces a cognitive perception and dual-process thinking approach to autonomous driving, improving decision-making and environmental understanding through human-inspired mechanisms and continuous learning.
Contribution
It presents a novel dual-process decision module and a human-attentional mechanism, enhancing autonomous driving systems with better reasoning and adaptability.
Findings
Outperforms camera-only methods on CARLA and DriveArena
Effective in limited data scenarios
Enhances continuous learning and domain adaptation
Abstract
While autonomous driving technology has made remarkable strides, data-driven approaches still struggle with complex scenarios due to their limited reasoning capabilities. Meanwhile, knowledge-driven autonomous driving systems have evolved considerably with the popularization of visual language models. In this paper, we propose LeapVAD, a novel method based on cognitive perception and dual-process thinking. Our approach implements a human-attentional mechanism to identify and focus on critical traffic elements that influence driving decisions. By characterizing these objects through comprehensive attributes - including appearance, motion patterns, and associated risks - LeapVAD achieves more effective environmental representation and streamlines the decision-making process. Furthermore, LeapVAD incorporates an innovative dual-process decision-making module miming the human-driving…
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Taxonomy
TopicsReinforcement Learning in Robotics · Autonomous Vehicle Technology and Safety · EEG and Brain-Computer Interfaces
MethodsEntropy Regularization · Proximal Policy Optimization · Focus · CARLA: An Open Urban Driving Simulator
