Publication | Closed Access
WinCLIP: Zero-/Few-Shot Anomaly Classification and Segmentation
284
Citations
41
References
2023
Year
Unknown Venue
Anomaly DetectionMachine LearningEngineeringNatural Language ProcessingImage AnalysisZero-shot LearningData ScienceData MiningPattern RecognitionMachine VisionVisual Anomaly ClassificationFeature LearningKnowledge DiscoveryVision Language ModelComputer ScienceAnomaly ClassificationZero-/few-shot Anomaly ClassificationDeep LearningComputer VisionIndustrial Quality InspectionNovelty Detection
Visual anomaly classification and segmentation are vital for automating industrial quality inspection. The focus of prior research in the field has been on training custom models for each quality inspection task, which requires task-specific images and annotation. In this paper we move away from this regime, addressing zero-shot and few-normal-shot anomaly classification and segmentation. Recently CLIP, a vision-language model, has shown revolutionary generality with competitive zero-/few-shot performance in comparison to full-supervision. But CLIP falls short on anomaly classification and segmentation tasks. Hence, we propose window-based CLIP (WinCLIP) with (1) a compositional ensemble on state words and prompt templates and (2) efficient extraction and aggregation of window/patch/image-level features aligned with text. We also propose its few-normal-shot extension Win-CLIP+, which uses complementary information from normal images. In MVTec-AD (and VisA), without further tuning, WinCLIP achieves 91.8%/85.1% (78.1%/79.6%) AU-ROC in zero-shot anomaly classification and segmentation while WinCLIP + does 93.1%/95.2% (83.8%/96.4%) in 1-normal-shot, surpassing state-of-the-art by large margins.
| Year | Citations | |
|---|---|---|
Page 1
Page 1