ClimaOoD: Improving Anomaly Segmentation via Physically Realistic Synthetic Data
Yuxing Liu, Zheng Li, Huanhuan Liang, Ji Zhang, Zeyu Sun, Yong Liu

TL;DR
This paper introduces ClimaOoD, a physically realistic synthetic data benchmark for anomaly segmentation in autonomous driving, improving model robustness across diverse weather conditions.
Contribution
It presents ClimaDrive, a novel framework for generating semantically coherent, weather-diverse, and physically plausible synthetic anomaly data for training.
Findings
Training with ClimaOoD improves anomaly segmentation performance.
Significant reduction in false positive rate (FPR95) across methods.
Enhanced robustness of models in adverse weather conditions.
Abstract
Anomaly segmentation seeks to detect and localize unknown or out-of-distribution (OoD) objects that fall outside predefined semantic classes a capability essential for safe autonomous driving. However, the scarcity and limited diversity of anomaly data severely constrain model generalization in open-world environments. Existing approaches mitigate this issue through synthetic data generation, either by copy-pasting external objects into driving scenes or by leveraging text-to-image diffusion models to inpaint anomalous regions. While these methods improve anomaly diversity, they often lack contextual coherence and physical realism, resulting in domain gaps between synthetic and real data. In this paper, we present ClimaDrive, a semantics-guided image-to-image framework for synthesizing semantically coherent, weather-diverse, and physically plausible OoD driving data. ClimaDrive unifies…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning · Adversarial Robustness in Machine Learning
