TFT-LCD光刻过程缺陷识别的神经网络方法

Li-Fei Chen, Chao-Ton Su, Mengyu Chen
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引用次数: 18

摘要

随着高质量微型化技术的出现,光刻工艺的良率控制在薄膜晶体管-液晶显示器(tft - lcd)的制造中起着重要的作用。通过自动光学检测(AOI),从面板上收集缺陷点,并在光刻过程后生成缺陷图像。缺陷图像通常由经验丰富的工程师或操作员识别。显然,人类的识别可能会产生潜在的错误判断,并造成时间损失。因此,本研究提出了一种神经网络方法来识别TFT-LCD光刻过程中的缺陷。为此采用了反向传播、径向基函数、学习向量量化1、学习向量量化2四种神经网络方法。对这四种类型的神经网络的性能进行了比较。结果表明,该方法能有效地识别光刻过程中的缺陷图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Neural-Network Approach for Defect Recognition in TFT-LCD Photolithography Process
Since the advent of high qualification and tiny technology, yield control in the photolithography process has played an important role in the manufacture of thin-film transistor-liquid crystal displays (TFT-LCDs). Through an auto optic inspection (AOI), defect points from the panels are collected, and the defect images are generated after the photolithography process. The defect images are usually identified by experienced engineers or operators. Evidently, human identification may produce potential misjudgments and cause time loss. This study therefore proposes a neural-network approach for defect recognition in the TFT-LCD photolithography process. There were four neural-network methods adopted for this purpose, namely, backpropagation, radial basis function, learning vector quantization 1, and learning vector quantization 2. A comparison of the performance of these four types of neural-networks was illustrated. The results showed that the proposed approach can effectively recognize the defect images in the photolithography process.
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