UMAD: University of Macau Anomaly Detection Benchmark Dataset
Dong Li, Lineng Chen, Cheng-Zhong Xu, Hui Kong

TL;DR
The paper introduces UMAD, a novel benchmark dataset for anomaly detection with reference in robotic patrolling, facilitating research in comparing reference and query images for anomaly identification.
Contribution
First benchmark dataset specifically designed for anomaly detection with reference in robotic patrolling scenarios, enabling evaluation of change detection methods.
Findings
Baseline models evaluated on UMAD dataset
Dataset enables geometric alignment of reference and query images
Supports research in anomaly detection with reference in robotics
Abstract
Anomaly detection is critical in surveillance systems and patrol robots by identifying anomalous regions in images for early warning. Depending on whether reference data are utilized, anomaly detection can be categorized into anomaly detection with reference and anomaly detection without reference. Currently, anomaly detection without reference, which is closely related to out-of-distribution (OoD) object detection, struggles with learning anomalous patterns due to the difficulty of collecting sufficiently large and diverse anomaly datasets with the inherent rarity and novelty of anomalies. Alternatively, anomaly detection with reference employs the scheme of change detection to identify anomalies by comparing semantic changes between a reference image and a query one. However, there are very few ADr works due to the scarcity of public datasets in this domain. In this paper, we aim to…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection
