首页 /研究 /Anomaly-Informed Confidence Calibration for Vision-Based Safety Prediction
PERCEPTION

Anomaly-Informed Confidence Calibration for Vision-Based Safety Prediction

Zhenjiang Mao, Jiawen Wu, Gabriel Wagner, Zhongzheng Zhang, Ivan Ruchkin

发表年份
2026
访问权限
开放获取

摘要

Reliable confidence estimates are important for safely deploying vision-based controllers in autonomous racing, where safety predictions must be derived from camera images, yet modern predictors become dangerously overconfident under test-time distribution shifts. We identify a critical perception-dynamics gap in existing anomaly signals: widely used scores, such as autoencoder reconstruction error, capture visual corruptions but miss dynamics anomalies (e.g., actuation bias, latency), where images remain plausible while the trajectory degrades. To address this, we propose an Anomaly-Informed Online Calibration approach that, without retraining any model component, fuses two complementary anomaly scores extracted from a world model: a perceptual score from reconstruction error and a dynamics score from epistemic uncertainty and control-stream statistics. Based on these fused scores, a lightweight temperature-scaling calibrator leverages test-time augmentation to selectively reduce overconfidence under shift while preserving nominal-condition performance. Experiments on a physical DonkeyCar under four real-world anomaly protocols unseen during training (darkness, blur, actuation bias, processing latency) reduce average expected calibration error from 0.184 to 0.116, a 37% improvement over the best baseline, without modifying the base safety predictor.

关键词

cs.RO

相关论文

查看 PERCEPTION 分类全部论文