Summary of Investigating the Semantic Robustness Of Clip-based Zero-shot Anomaly Segmentation, by Kevin Stangl et al.
Investigating the Semantic Robustness of CLIP-based Zero-Shot Anomaly Segmentationby Kevin Stangl, Marius Arvinte, Weilin Xu,…
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