Identifying defect patterns in a wafer map during manufacturing is crucial to find the root cause of the underlying issue and provides valuable insights on improving yield in the foundry. Currently used methods use deep neural networks to identify the defects. These methods are generally very huge and have significant inference time. They also require GPU support to efficiently operate. All these issues make these models not fit for on-line prediction in the manufacturing foundry. In this paper, we propose an extremely simple yet effective technique to extract features from wafer images. The proposed method is extremely fast, intuitive, and non-parametric while being explainable. The experiment results show that the proposed pipeline outperforms conventional deep learning models. Our feature extraction requires no training or fine-tuning while preserving the relative shape and location of data points as revealed by our interpretability analysis.
翻译:在制造过程中识别晶片图中的缺陷模式至关重要,可以找到潜在问题的根本原因,并提供有价值的见解以改善图形中的产量。当前使用的方法使用深度神经网络来识别缺陷。这些方法通常非常庞大,并且具有显着的推理时间。它们还需要GPU支持才能有效地运行。所有这些问题使这些模型不适合于制造晶片中的在线预测。在本文中,我们提出了一种极其简单但有效的技术来从晶片图像中提取特征。所提出的方法非常快速、直观和非参数化,同时又是可以解释的。实验结果表明,所提出的流程优于传统的深度学习模型。我们的特征提取不需要训练或微调,同时通过解释性分析保留数据点的相对形状和位置。