PAD: A Dataset and Benchmark for Pose-agnostic Anomaly Detection
Qiang Zhou, Weize Li, Lihan Jiang, Guoliang Wang, Guyue Zhou,, Shanghang Zhang, Hao Zhao

TL;DR
This paper introduces the MAD dataset and PAD benchmark to advance pose-agnostic object anomaly detection, addressing the lack of pose diversity and standardized evaluation protocols in existing research.
Contribution
It provides the first comprehensive dataset and benchmark for pose-agnostic anomaly detection, along with a novel method OmniposeAD trained on this dataset.
Findings
MAD dataset includes 20 LEGO toys with diverse poses and anomalies.
OmniposeAD outperforms existing methods in pose-agnostic scenarios.
Benchmark library enables fair comparison of anomaly detection methods.
Abstract
Object anomaly detection is an important problem in the field of machine vision and has seen remarkable progress recently. However, two significant challenges hinder its research and application. First, existing datasets lack comprehensive visual information from various pose angles. They usually have an unrealistic assumption that the anomaly-free training dataset is pose-aligned, and the testing samples have the same pose as the training data. However, in practice, anomaly may exist in any regions on a object, the training and query samples may have different poses, calling for the study on pose-agnostic anomaly detection. Second, the absence of a consensus on experimental protocols for pose-agnostic anomaly detection leads to unfair comparisons of different methods, hindering the research on pose-agnostic anomaly detection. To address these issues, we develop Multi-pose Anomaly…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Adversarial Robustness in Machine Learning · Advanced Neural Network Applications
