AEGIS: Human Attention-based Explainable Guidance for Intelligent Vehicle Systems
Zhuang, Zhuoli, Lu, Cheng-You, Chang, Yu-Cheng Fred, Wang, Yu-Kai, Do, Thomas, Lin, Chin-Teng
–arXiv.org Artificial Intelligence
Improving decision-making capabilities in Autonomous Intelligent Vehicles (AIVs) has been a heated topic in recent years. Despite advancements, training machines to capture regions of interest for comprehensive scene understanding, like human perception and reasoning, remains a significant challenge. This study introduces a novel framework, Human Attention-based Explainable Guidance for Intelligent Vehicle Systems (AEGIS). AEGIS utilizes human attention, converted from eye-tracking, to guide reinforcement learning (RL) models to identify critical regions of interest for decision-making. AEGIS uses a pre-trained human attention model to guide RL models to identify critical regions of interest for decision-making. By collecting 1.2 million frames from 20 participants across six scenarios, AEGIS pre-trains a model to predict human attention patterns.
arXiv.org Artificial Intelligence
Apr-9-2025
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