Task: Visual Anomaly Detection
License: Apache 2.0
This dataset has been collected by Edge Impulse teams and contains a single flat washer, randomly located in the frame. The dataset has been collected using two different backgrounds - a white background and textured dark-grey background. The training dataset only contains "nominal" (no anomaly) images whereas the testing dataset contains both nominal and anomalous images.
Feature extraction: Image
Learning block: Visual Anomaly Detection (FOMO-AD)
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Total Data Items: 464
Labeling Method: single label
Train/Test Split: 58.84% / 41.16%
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). See this documentation page for more info.
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Training Set
Testing Set
Total Data Items
273
191
Labels
no anomaly
anomaly, no anomaly