TFT-LCD uneven brightness correction and recognition of MURA area based on EMD method

Ziwei Zhu, Xiang Qian, Qian Zhao, Qian Zhou, K. Ni, Xiaohao Wang
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引用次数: 8

Abstract

In automatic visual inspection of TFT-LCD, MURA defect is difficult to recognize due to uneven brightness of the panel. This paper proposed a preprocessing method to eliminate such unevenness using Empirical Mode Decomposition (EMD). Comparing to existing algorithms, such as the Principal Components Analysis (PCA), this method provided a more integral distribution of the unevenness. Then a grey level nonlinear transformation was proposed to eliminate the unevenness of the original image. Besides eliminating the unevenness, results indicated that the EMD method can further give the upheaval features, as white points and texture features, and graded features, as MURA defect, which suggested that it may be possible to extract the MURA defect in an uneven illumination image by the proposed method.
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基于EMD方法的TFT-LCD MURA区域亮度不均匀校正与识别
在TFT-LCD的自动视觉检测中,由于面板亮度不均匀,MURA缺陷难以识别。本文提出了一种利用经验模态分解(EMD)来消除这种不均匀性的预处理方法。与现有的主成分分析(PCA)等算法相比,该方法提供了更完整的不均匀分布。然后提出了灰度非线性变换来消除原始图像的不均匀性。结果表明,EMD方法除消除不均匀性外,还可以将剧变特征(如白点、纹理特征)和梯度特征作为MURA缺陷,这表明该方法可以在光照不均匀的图像中提取MURA缺陷。
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