DRIVE: Dependable Robust Interpretable Visionary Ensemble Framework in Autonomous Driving
Songning Lai, Tianlang Xue, Hongru Xiao, Lijie Hu, Jiemin Wu, Ninghui, Feng, Runwei Guan, Haicheng Liao, Zhenning Li, Yutao Yue

TL;DR
DRIVE is a comprehensive framework designed to enhance the dependability, stability, and interpretability of end-to-end autonomous driving models, addressing trust and safety challenges by improving explanation robustness.
Contribution
It introduces the DRIVE framework with new attributes and metrics to improve explanation stability and dependability in autonomous driving models, especially targeting the DCG model.
Findings
Enhanced explanation stability demonstrated through empirical evaluations
Framework improves trustworthiness of autonomous driving decisions
Provides new metrics for assessing explainability dependability
Abstract
Recent advancements in autonomous driving have seen a paradigm shift towards end-to-end learning paradigms, which map sensory inputs directly to driving actions, thereby enhancing the robustness and adaptability of autonomous vehicles. However, these models often sacrifice interpretability, posing significant challenges to trust, safety, and regulatory compliance. To address these issues, we introduce DRIVE -- Dependable Robust Interpretable Visionary Ensemble Framework in Autonomous Driving, a comprehensive framework designed to improve the dependability and stability of explanations in end-to-end unsupervised autonomous driving models. Our work specifically targets the inherent instability problems observed in the Driving through the Concept Gridlock (DCG) model, which undermine the trustworthiness of its explanations and decision-making processes. We define four key attributes of…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Advanced Neural Network Applications
