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Improved tangent space based distance metric for accurate lithographic hotspot classification

机译:改进的基于切线空间的距离度量,可实现准确的光刻热点分类

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摘要

A distance metric of patterns is crucial to hotspot cluster analysis and classification. In this paper, we propose an improved tangent space based metric for pattern matching based hotspot cluster analysis and classification. The proposed distance metric is an important extension of the well-developed tangent space method in computer vision. It can handle patterns containing multiple polygons, while the traditional tangent space method can only deal with patterns with a single polygon. It inherits most of the advantages of the traditional tangent space method, e.g., it is easy to compute and is tolerant with small variations or shifts of the shapes. Compared with the existing distance metric based on XOR of hotspot patterns, the improved tangent space based distance metric can achieve up to 37.5% accuracy improvement with at most 4.3× computational cost in the context of cluster analysis. The improved tangent space based distance metric is a more reliable and accurate metric for hotspot cluster analysis and classification. It is more suitable for industry applications.
机译:模式的距离度量对于热点聚类分析和分类至关重要。在本文中,我们提出了一种改进的基于切线空间的度量,用于基于模式匹配的热点聚类分析和分类。拟议的距离度量是计算机视觉中成熟的切线空间方法的重要扩展。它可以处理包含多个多边形的图案,而传统的切线空间方法只能处理单个多边形的图案。它继承了传统切线空间方法的大多数优点,例如,它易于计算,并且在形状的微小变化或偏移方面是可以容忍的。与基于热点模式XOR的现有距离度量相比,改进的基于切线空间的距离度量在聚类分析的情况下可以实现高达37.5%的精度提高,而计算成本最多为4.3倍。改进的基于切线空间的距离度量是用于热点聚类分析和分类的更可靠,更准确的度量。它更适合工业应用。

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