论文标题

SEM图像中基于深度学习的缺陷分类和检测

Deep Learning-Based Defect Classification and Detection in SEM Images

论文作者

Deya, Bappaditya, Goswamif, Dipam, Haldera, Sandip, Khalilb, Kasem, Leraya, Philippe, Bayoumi, Magdy A.

论文摘要

这提出了一种新型的基于深度学习的模型,可以准确地对侵略性和较薄的抵抗(高NA应用)进行精确分类,检测和定位不同的缺陷类别。特别是,我们使用不同的Resnet,VGGNET体系结构为骨链,并在这些模型的准确性分析中与桥梁类型的图像进行了杂物拼凑而成,例如,在桥梁上进行了分析,例如,桥梁的效果分析,例如不同的类型,例如,桥梁的范围拼贴和桥梁拼凑而成。最后,我们提出了一种基于偏好的集成策略,以结合不同模型的输出预测,以便在分类和检测缺陷方面获得更好的性能。由于CDSEM图像固有地包含大量的噪声,因此详细的特征信息通常会被噪声遮蔽。对于某些抵抗配置文件,挑战也是要区分可能断裂的Microbridge,基础,断裂和区域。因此,我们已经应用了一个无监督的机器学习模型来将SEM图像降低以消除假阳性缺陷,并优化随机噪声对结构化像素的影响,以更好地计量和增强缺陷检查。我们使用相同的训练模型重复了缺陷检查步骤,并对“鲁棒性”和“准确性”进行了比较分析,并使用常规方法对嘈杂/透明的图像对进行了比较。提出的合奏方法证明了最困难的缺陷类别的平均精度度量(MAP)的改善。在这项工作中,我们开发了一种新颖的强大监督深度学习训练计划,以高度准确性地将不同的缺陷类型分类并定位不同的缺陷类型。我们提出的方法在定量和定性上都证明了其有效性。

This proposes a novel ensemble deep learning-based model to accurately classify, detect and localize different defect categories for aggressive pitches and thin resists (High NA applications).In particular, we train RetinaNet models using different ResNet, VGGNet architectures as backbone and present the comparison between the accuracies of these models and their performance analysis on SEM images with different types of defect patterns such as bridge, break and line collapses. Finally, we propose a preference-based ensemble strategy to combine the output predictions from different models in order to achieve better performance on classification and detection of defects. As CDSEM images inherently contain a significant level of noise, detailed feature information is often shadowed by noise. For certain resist profiles, the challenge is also to differentiate between a microbridge, footing, break, and zones of probable breaks. Therefore, we have applied an unsupervised machine learning model to denoise the SEM images to remove the False-Positive defects and optimize the effect of stochastic noise on structured pixels for better metrology and enhanced defect inspection. We repeated the defect inspection step with the same trained model and performed a comparative analysis for "robustness" and "accuracy" metric with conventional approach for both noisy/denoised image pair. The proposed ensemble method demonstrates improvement of the average precision metric (mAP) of the most difficult defect classes. In this work we have developed a novel robust supervised deep learning training scheme to accurately classify as well as localize different defect types in SEM images with high degree of accuracy. Our proposed approach demonstrates its effectiveness both quantitatively and qualitatively.

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