Domain-independent detection of known anomalies
One persistent obstacle in industrial quality inspection is the detection of anomalies. In real-world use cases, two problems must be addressed: anomalous data is sparse and the same types of anomalies need to be detected on previously unseen objects. Current anomaly detection approaches can be trai...
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Zusammenfassung: | One persistent obstacle in industrial quality inspection is the detection of
anomalies. In real-world use cases, two problems must be addressed: anomalous
data is sparse and the same types of anomalies need to be detected on
previously unseen objects. Current anomaly detection approaches can be trained
with sparse nominal data, whereas domain generalization approaches enable
detecting objects in previously unseen domains. Utilizing those two
observations, we introduce the hybrid task of domain generalization on sparse
classes. To introduce an accompanying dataset for this task, we present a
modification of the well-established MVTec AD dataset by generating three new
datasets. In addition to applying existing methods for benchmark, we design two
embedding-based approaches, Spatial Embedding MLP (SEMLP) and Labeled
PatchCore. Overall, SEMLP achieves the best performance with an average
image-level AUROC of 87.2 % vs. 80.4 % by MIRO. The new and openly available
datasets allow for further research to improve industrial anomaly detection. |
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DOI: | 10.48550/arxiv.2407.02910 |