Exploring Active Learning for Semiconductor Defect Segmentation
Exploring Active Learning for Semiconductor Defect Segmentation
The development of X-Ray microscopy (XRM) technology has enabled non-destructive inspection of semiconductor structures for defect identification. Deep learning is widely used as the state-of-the-art approach to perform visual analysis tasks. However, deep learning based models require large amount of annotated data to train. This can be time-consuming and expensive to obtain especially for dense prediction tasks like semantic segmentation. In this work, we explore active learning (AL) as a potential solution to alleviate the annotation burden. We identify two unique challenges when applying AL on semiconductor XRM scans: large domain shift and severe class-imbalance. To address these challenges, we propose to perform contrastive pretraining on the unlabelled data to obtain the initialization weights for each AL cycle, and a rareness-aware acquisition function that favors the selection of samples containing rare classes. We evaluate our method on a semiconductor dataset that is compiled from XRM scans of high bandwidth memory structures composed of logic and memory dies, and demonstrate that our method achieves state-of-the-art performance.
Lile Cai、Ramanpreet Singh Pahwa、Xun Xu、Jie Wang、Richard Chang、Lining Zhang、Chuan-Sheng Foo
10.1109/ICIP46576.2022.9897842
半导体技术微电子学、集成电路
Lile Cai,Ramanpreet Singh Pahwa,Xun Xu,Jie Wang,Richard Chang,Lining Zhang,Chuan-Sheng Foo.Exploring Active Learning for Semiconductor Defect Segmentation[EB/OL].(2025-07-23)[2025-08-10].https://arxiv.org/abs/2507.17359.点此复制
评论