Failure-Aware Refinement of Vision-Language Model for Lithography Defect Detection (opens in new tab) 聽馃捇Chips 聽Content type: Academic
Semiconductor lithography inspection requires reliable detection of small pattern defects such as bridge, burr, pinch, and contamination. In this study, we propose a two-stage vision-language framework that combines initial defect detection with prediction refinement. In the first stage, Qwen3-VL is fine-tuned with LoRA as a vision-language adapter to predict defect counts, defect categories, and normalized bounding boxes from lithography images...
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