Domain-Generalized Textured Surface Anomaly Detection
- URL: http://arxiv.org/abs/2203.12304v1
- Date: Wed, 23 Mar 2022 10:01:35 GMT
- Title: Domain-Generalized Textured Surface Anomaly Detection
- Authors: Shang-Fu Chen, Yu-Min Liu, Chia-Ching Lin, Trista Pei-Chun Chen,
Yu-Chiang Frank Wang
- Abstract summary: Anomaly detection aims to identify abnormal data that deviates from the normal ones, while requiring a sufficient amount of normal data to train the model for performing this task.
In this paper, we address the task of domain-generalized textured surface anomaly detection.
Our model is expected to be generalized to an unseen textured surface of interest, in which only a small number of normal data can be observed during testing.
- Score: 29.88664324332402
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anomaly detection aims to identify abnormal data that deviates from the
normal ones, while typically requiring a sufficient amount of normal data to
train the model for performing this task. Despite the success of recent anomaly
detection methods, performing anomaly detection in an unseen domain remain a
challenging task. In this paper, we address the task of domain-generalized
textured surface anomaly detection. By observing normal and abnormal surface
data across multiple source domains, our model is expected to be generalized to
an unseen textured surface of interest, in which only a small number of normal
data can be observed during testing. Although with only image-level labels
observed in the training data, our patch-based meta-learning model exhibits
promising generalization ability: not only can it generalize to unseen image
domains, but it can also localize abnormal regions in the query image. Our
experiments verify that our model performs favorably against state-of-the-art
anomaly detection and domain generalization approaches in various settings.
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