Improved Bump Detection and Defect Identification for HBMs using Refined Machine Learning Approach

Wang Jie, Richard Chang, Xu Xun, Cai Lile, Chuan-Sheng Foo, R. Pahwa
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引用次数: 2

Abstract

The 2D-3D metrology is a critical step for in-line inspection and off-line failure analysis. Due to lack of relevant data and complexity of embedded components, identifying and segmenting defects such as voids, pad misalignments in 2D and 3D voxel data has been a challenge in the semiconductor industry. Addressing this problem has the potential to further improve fault detection in this field significantly. This work follows our previously published works in EPTC 2020, ECTC 2021, introducing a cost-effective and non-destructive approach using deep learning and 3D x-ray microscopy. In particular, we apply our 3D object detection and Semi-Supervised Learning (SSL) image segmentation on High Bandwidth memory and logic bumps (HBMs). This paper introduces new detection and segmentation methods that overcomes issues in the current data such as data imbalance or defective bumps. We applied better 2D-3D detection strategy and loss and activation functions for 3D semicon data. We describe the data features, our new approach on 2D-3D scanned data, methods developed to perform better object detection and segmentation to classify each pixel into individual categories such as solders, voids, Cu-Pillars, and Cu-Pad. We analyze in-depth observations from our new models and discuss the benefits and improvements of our revised approach.
基于改进机器学习方法的HBMs碰撞检测和缺陷识别
2D-3D测量是在线检测和离线故障分析的关键步骤。由于缺乏相关数据和嵌入式组件的复杂性,在2D和3D体素数据中识别和分割诸如空隙、垫不对中等缺陷一直是半导体行业的一个挑战。解决这个问题有可能进一步显著改善该领域的故障检测。这项工作是继我们之前在EPTC 2020, ECTC 2021上发表的作品之后,介绍了一种使用深度学习和3D x射线显微镜的成本效益和非破坏性方法。特别是,我们将我们的3D对象检测和半监督学习(SSL)图像分割应用于高带宽内存和逻辑凸起(HBMs)。本文介绍了一种新的检测和分割方法,克服了当前数据中存在的数据不平衡或缺陷凸起等问题。我们采用了更好的2D-3D检测策略以及三维半导体数据的损耗和激活函数。我们描述了数据特征,我们对2D-3D扫描数据的新方法,开发的方法来执行更好的对象检测和分割,将每个像素分类为单独的类别,如焊料,空洞,cu柱和Cu-Pad。我们分析了新模型的深入观察结果,并讨论了修订方法的好处和改进之处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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