Hint-AD: Holistically Aligned Interpretability in End-to-End Autonomous Driving
End-to-end architectures in autonomous driving (AD) face a significant challenge in interpretability, impeding human-AI trust. Human-friendly natural language has been explored for tasks such as driving explanation and 3D captioning. However, previous works primarily focused on the paradigm of decla...
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Zusammenfassung: | End-to-end architectures in autonomous driving (AD) face a significant
challenge in interpretability, impeding human-AI trust. Human-friendly natural
language has been explored for tasks such as driving explanation and 3D
captioning. However, previous works primarily focused on the paradigm of
declarative interpretability, where the natural language interpretations are
not grounded in the intermediate outputs of AD systems, making the
interpretations only declarative. In contrast, aligned interpretability
establishes a connection between language and the intermediate outputs of AD
systems. Here we introduce Hint-AD, an integrated AD-language system that
generates language aligned with the holistic perception-prediction-planning
outputs of the AD model. By incorporating the intermediate outputs and a
holistic token mixer sub-network for effective feature adaptation, Hint-AD
achieves desirable accuracy, achieving state-of-the-art results in driving
language tasks including driving explanation, 3D dense captioning, and command
prediction. To facilitate further study on driving explanation task on
nuScenes, we also introduce a human-labeled dataset, Nu-X. Codes, dataset, and
models will be publicly available. |
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DOI: | 10.48550/arxiv.2409.06702 |