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SEM image denoising with Unsupervised Machine Learning for better defect inspection and metrology

机译:SEM图像去噪与无监督机器学习更好的缺陷检查和计量

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CD-SEM images inherently contain a significant level of noise. This is because a limited number of frames are used for averaging, which is critical to ensure throughput and minimize resist shrinkage. This noise level of SEM images may lead to false defect detections and erroneous metrology. Therefore, reducing noise in SEM images is of utmost importance. Both conventional noise filtering techniques and recent most discriminative deep-learning based denoising algorithms are restricted with certain limitations. The first enables the risk of loss of information content and the later mostly requires clean ground-truth or synthetic images to train with. In this paper, we have proposed an U-Net architecture based unsupervised machine learning approach for denoising CD-SEM images without the requirement of any such ground-truth or synthetic images in true sense. Also, we have analysed and validated our result using MetroLER, v2.2.5.0. library. We have compared the power spectral density (PSD) of both the original noisy and denoised images. The high frequency component related to noise is clearly affected, as expected, while the low frequency component, related to the actual morphology of the feature, is unaltered. This indicate that the information content of the denoised images was not degraded by the proposed denoising approach in comparison to other existing approaches.
机译:CD-SEM图像固有地包含显着的噪声水平。这是因为有限数量的帧用于平均值,这对于确保吞吐量并最小化抗蚀剂收缩至关重要。 SEM图像的这种噪声水平可能导致虚假缺陷检测和错误的计量。因此,降低SEM图像中的噪声至关重要。常规噪声滤波技术和最近基于最判别的基于深度学习的去噪算法被某些限制受到限制。第一个使信息内容丢失的风险,后来主要需要清洁地面真理或合成图像与培训。在本文中,我们提出了一种基于U-Net架构的无监督机器学习方法,用于去噪CD-SEM图像,而不需要任何这样的地面真理或合成图像真实意义。此外,我们已经使用Metroler v2.2.5.0分析并验证了我们的结果。图书馆。我们已经比较了原始嘈杂和去噪图像的功率谱密度(PSD)。与噪声相关的高频分量如预期的那样,噪声与特征的实际形态相关的低频分量,而不存在。这表明与其他现有方法相比,所提出的去噪方法的信息含量没有降低。

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