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A Progressive Self-learning Photomask Defect Classification

机译:逐步自学习光掩模缺陷分类

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Following mask inspection, mask-defect classification is a process of reviewing and classifying each captured defect according to prior-defined printability rules. With the current hardware configuration in manufacturing environments, this review and classification process is a mandatory manual task. For cases with a relatively small number of captured defects, defect classification itself does not put too much burden to operators or engineers. With a moderate increase of defects, it would, however, become a time-consuming process and prolong the total mask-making cycle time. Should too many nuisance defects be caught under a given detection sensitivity, engineers would generally loosen the detection sensitivity in order to reduce the number of nuisance defects. By doing that, however, there exists potential threat of missing real defects. The present study describes a "progressive self-learning" (PSL) algorithm for defect classification to relieve loading from operators or engineers and further accelerate defect review/classification process. Basically, the PSL algorithm involves with image extraction, digitization, alignment and matching. One key concept of this PSL algorithm is that there is not any pre-stored defect library in the first place of a particular run. In turn, a defect library is "progressively" built during the initial stage of defect review and classification at each run. The merit of this design can be realized by its flexibility. An additional benefit is that all defect images are stored and suitable for network transfer. The C language is adopted to implement the present algorithm to avoid the porting issue, so as not bound to a particular machine. Assessment of the PSL algorithm is examined in terms of efficiency and the accurate rate.
机译:掩模检查后,掩模缺陷分类是根据先前义的可打印规则审查和分类每个捕获的缺陷的过程。通过制造环境中的当前硬件配置,此审查和分类过程是一个强制性手动任务。对于捕获缺陷数量相对较小的情况,缺陷分类本身不会向运营商或工程师带来太多负担。然而,随着缺陷的增加,它将成为耗时的过程,延长总掩模循环时间。在给定的检测灵敏度下应该捕获太多滋扰缺陷,工程师通常会松开检测灵敏度,以减少滋扰缺陷的数量。然而,通过这样做,存在缺失真实缺陷的潜在威胁。本研究描述了一种用于缺陷分类的“渐进式自学习”(PSL)算法,以缓解来自运营商或工程师的负载,并进一步加速缺陷审查/分类过程。基本上,PSL算法涉及图像提取,数字化,对齐和匹配。此PSL算法的一个关键概念是在特定运行的第一位置没有任何预先存储的缺陷库。反过来,在每个运行的缺陷审查和分类的初始阶段,“逐步”构建缺陷库。这种设计的优点可以通过其灵活性实现。额外的好处是存储所有缺陷图像并适合网络传输。采用C语言来实现本算法以避免移植问题,从而不绑定到特定机器。在效率和准确速率方面检查了PSL算法的评估。

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