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首页> 外文期刊>IEEE Transactions on Semiconductor Manufacturing >A Graph-Theoretic Approach for Spatial Filtering and Its Impact on Mixed-Type Spatial Pattern Recognition in Wafer Bin Maps
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A Graph-Theoretic Approach for Spatial Filtering and Its Impact on Mixed-Type Spatial Pattern Recognition in Wafer Bin Maps

机译:空间过滤的图形理论方法及其对晶圆箱地图混合型空间模式识别的影响

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摘要

Statistical quality control in semiconductor manufacturing hinges on effective diagnostics of wafer bin maps, wherein a key challenge is to detect how defective chips tend to spatially cluster on a wafer-a problem known as spatial pattern recognition. Recently, there has been a growing interest in mixed-type spatial pattern recognition-when multiple defect patterns, of different shapes, co-exist on the same wafer. Mixed-type spatial pattern recognition entails two central tasks: (1) spatial filtering, to distinguish systematic patterns from random noises; and (2) spatial clustering, to group filtered patterns into distinct defect types. Observing that spatial filtering is instrumental to high-quality mixed-type pattern recognition, we propose to use a graph-theoretic method, called adjacency-clustering, which leverages spatial dependence among adjacent defective chips to effectively filter the raw wafer maps. Tested on real-world data and compared against a state-of-the-art approach, our proposed method achieves at least 46% gain in terms of internal cluster validation quality (i.e., validation without external class labels), and about 5% gain in terms of Normalized Mutual Information-an external cluster validation metric based on external class labels. Interestingly, the margin of improvement appears to be a function of the pattern complexity, with larger gains achieved for more complex-shaped patterns.
机译:半导体制造铰链中的统计质量控制在晶片箱地图的有效诊断上,其中一个关键挑战是检测芯片倾向于在被称为空间模式识别的问题上的空间簇的缺陷件。最近,当不同形状的多个缺陷图案,在同一晶片上共存时,对混合型空间模式识别的兴趣日益增长。混合型空间模式识别需要两个中央任务:(1)空间过滤,以区分从随机噪声的系统模式; (2)空间聚类,将过滤模式分组成明显的缺陷类型。观察空间滤波是高质量的混合型模式识别的工具,我们建议使用称为邻接聚类的图形 - 理论方法,该方法利用相邻的缺陷芯片之间的空间依赖性,从而有效地过滤原始晶片图。在现实世界数据上测试并与最先进的方法进行比较,我们提出的方法在内部集群验证质量方面至少实现了至少46%的增益(即没有外部类标签的验证),增益约为5%就标准化的互信息而言 - 基于外部类标签的外部群集验证度量。有趣的是,改进的边缘似乎是模式复杂性的函数,实现更复杂的图案的较大增益。

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