基于大规模无标注数据的可扩展学习型自动紧急制动系统 / Scaling Learning-based AEB with Massive Unlabeled Data
1️⃣ 一句话总结
本文提出了一种稳定化的半监督学习框架,通过噪声感知解耦和运动学门控伪标签技术,利用大规模未标注驾驶数据高效训练自动紧急制动系统,在百万辆级真实部署中实现了超过100:1的正误触发比和35%的无事故里程提升。
This paper studies how to scale learning-based automatic emergency braking (AEB) with massive unlabeled fleet data under production constraints. Our approach is based on meta-feedback semi-supervised learning (MF-SSL), where a teacher generates pseudo labels for unlabeled driving data and is updated using a small labeled anchor set as safety-critical feedback. In production, anchor ambiguity and labeled-unlabeled mismatch can amplify systematic pseudo-label errors, leading to spurious triggers. We propose a stabilized MF-SSL framework with (i) Noise-Aware Decoupling, which removes ambiguity-prone anchors from the teacher's supervised update path, and (ii) kinematics-gated pseudo-labeling with a teacher conflict penalty to suppress mismatch-induced risk hallucinations on unlabeled data while maintaining broad coverage. Extensive experiments show consistent gains as unlabeled data scale from 1M to 1B windows, improving safety while keeping comfort stable. The 1B-trained student model is deployed to hundreds of thousands of vehicles and validated over \$10^9$ km of driving, achieving a positive-to-false activation ratio exceeding 100:1 and a 35% improvement in accident-free driving mileage over a production rule-only baseline.
基于大规模无标注数据的可扩展学习型自动紧急制动系统 / Scaling Learning-based AEB with Massive Unlabeled Data
本文提出了一种稳定化的半监督学习框架,通过噪声感知解耦和运动学门控伪标签技术,利用大规模未标注驾驶数据高效训练自动紧急制动系统,在百万辆级真实部署中实现了超过100:1的正误触发比和35%的无事故里程提升。
源自 arXiv: 2606.18864