Manufacturing wafers is an intricate task involving thousands of steps. Defect Pattern Recognition (DPR) of wafer maps is crucial to find the root cause of the issue and further improving the yield in the wafer foundry. Mixed-type DPR is much more complicated compared to single-type DPR due to varied spatial features, the uncertainty of defects, and the number of defects present. To accurately predict the number of defects as well as the types of defects, we propose a novel compact deformable convolutional transformer (DC Transformer). Specifically, DC Transformer focuses on the global features present in the wafer map by virtue of learnable deformable kernels and multi-head attention to the global features. The proposed method succinctly models the internal relationship between the wafer maps and the defects. DC Transformer is evaluated on a real dataset containing 38 defect patterns. Experimental results show that DC Transformer performs exceptionally well in recognizing both single and mixed-type defects. The proposed method outperforms the current state of the models by a considerable margin
翻译:制造晶圆是一个复杂的任务,涉及数千个步骤。晶圆图案缺陷模式识别(DPR)对于查找问题的根本原因并进一步改善晶圆厂的产量至关重要。与单一类型DPR相比,混合型DPR更加复杂,由于存在多种空间特征、缺陷的不确定性和数量。为了准确预测缺陷的数量以及缺陷的类型,我们提出了一种新颖的紧缩形变卷积转换器(DC Transformer)。具体来说,DC Transformer通过可学习的形变核和多头注意机制聚焦于晶圆图中的全局特征。所提出的方法简明地建模了晶圆图和缺陷之间的内在关系。DC Transformer在包含38个缺陷模式的实际数据集上进行了评估。实验结果表明,DC Transformer在识别单一和混合型缺陷方面表现出色。该方法在当前模型的性能方面领先很大。