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Unsupervised-Learning-Based Feature-Level Fusion Method for Mura Defect Recognition

机译:基于无监督学习的特征层融合方法在Mura缺陷识别中的应用

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摘要

Mura defect recognition has long been a challenging task in displays, such as the liquid-crystal display (LCD), organic light-emitting diode display and polymer light-emitting diode display. In this paper, we propose an unsupervised-learning-based feature-level fusion approach for mura defect recognition. The approach is known as a joint-feature-representation-based defect recognition framework method. This method concentrates on obtaining effective and sufficient features for mura defects by fusing handcrafted and unsupervised-learned features in a complementary manner. To demonstrate the performance, several experiments are carried out to compare this method with some widely used feature extraction approaches. Experimental results show that the proposed method is more robust and accurate. They also indicate that it is compatible with different unsupervised-learning-based algorithms and handcrafted feature descriptors. Finally, the proposed method is implemented in the vision inspection equipment for recognizing mura defects in thin-film-transistor-LCD panels. It exhibits high robustness and improves the recognition performance by nearly 20% compared with the traditional handcrafted feature descriptors.
机译:长期以来,Mura缺陷识别一直是液晶显示器(LCD),有机发光二极管显示器和聚合物发光二极管显示器等显示器中的一项艰巨任务。在本文中,我们提出了一种基于无监督学习的特征级融合方法,用于mura缺陷识别。该方法被称为基于联合特征表示的缺陷识别框架方法。该方法的重点是通过以互补的方式融合手工制作和未经监督学习的特征来获得有效且充分的特征,以解决mura缺陷。为了演示该性能,进行了一些实验以将该方法与一些广泛使用的特征提取方法进行比较。实验结果表明,该方法具有较好的鲁棒性和准确性。他们还表明它与不同的基于无监督学习的算法和手工制作的特征描述符兼容。最后,该方法在视觉检测设备中实现,用于识别薄膜晶体管LCD面板中的色斑缺陷。与传统的手工特征描述符相比,它具有很高的鲁棒性并将识别性能提高了近20%。

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