OoDDINO:A Multi-level Framework for Anomaly Segmentation on Complex Road Scenes
Yuxing Liu, Ji Zhang, Zhou Xuchuan, Jingzhong Xiao, Huimin Yang, Jiaxin Zhong

TL;DR
OoDDINO is a multi-level framework that improves anomaly segmentation in complex road scenes by integrating uncertainty metrics and adaptive thresholds, addressing spatial correlation and score variability issues.
Contribution
It introduces a novel multi-level cascade architecture with uncertainty-guided detection and adaptive thresholds, enhancing segmentation accuracy over existing pixel-wise methods.
Findings
Outperforms state-of-the-art methods on benchmark datasets.
Effectively captures spatial correlations among pixels.
Reduces false positives and missed anomalies through adaptive thresholding.
Abstract
Anomaly segmentation aims to identify Out-of-Distribution (OoD) anomalous objects within images. Existing pixel-wise methods typically assign anomaly scores individually and employ a global thresholding strategy to segment anomalies. Despite their effectiveness, these approaches encounter significant challenges in real-world applications: (1) neglecting spatial correlations among pixels within the same object, resulting in fragmented segmentation; (2) variabil ity in anomaly score distributions across image regions, causing global thresholds to either generate false positives in background areas or miss segments of anomalous objects. In this work, we introduce OoDDINO, a novel multi-level anomaly segmentation framework designed to address these limitations through a coarse-to-fine anomaly detection strategy. OoDDINO combines an uncertainty-guided anomaly detection model with a…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Infrastructure Maintenance and Monitoring · Traffic Prediction and Management Techniques
