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Double Low-rank Based Matrix Decomposition for Surface Defect Segmentation of Steel Sheet

机译:钢板表面缺陷分割的双低级基矩阵分解

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Despite advances in surface defect segmentation of steel sheet, it is still far from meeting the needs of real-world applications due to some method usually lack of adaptiveness to different shape, size, location and texture of defect object. Based on the assumption that each defect image is composed of defect-free background components that reflect the similarities of different regions and defect foreground components that reflect unique object information, we formulate the segmentation task as an image decomposition problem. To this end, we develop a double low-rank based matrix factorization framework for decomposing the surface defect image into defect foreground image and defect-free background image. Furthermore, considering the similarity of the defect-free background sub-regions and the defective sub-regions, Laplacian and sparse regularization terms are introduced into the matrix decomposition framework to improve their representation ability and discriminative ability. Importantly, the proposed method is unsupervised and training-free, so it does not requiring a large number of training samples with time-consuming manual labels. Experimental results on synthetic and real-world surface defect images show that the proposed method outperforms some state-of-the-art approaches in terms of both subjective and objective experiments.
机译:尽管钢板表面缺陷分割的进步,但由于某些方法通常缺乏对不同形状,大小,位置和纹理的缺陷物体的适应性缺乏适应性,仍远远满足现实世界应用的需求。基于每个缺陷图像由反映反映唯一对象信息的不同区域和缺陷前景分量的相似性的无缺陷背景组件组成,我们将分段任务制定为图像分解问题。为此,我们开发了一种双低级基于矩阵分解框架,用于将表面缺陷图像分解成缺陷前景图像和无缺陷背景图像。此外,考虑到无缺陷背景子区域的相似性和缺陷的子区域,LAPLACIAN和稀疏正则化术语被引入矩阵分解框架,以提高它们的表示能力和辨别能力。重要的是,提出的方法是无监督和无训练的,因此它不需要大量培训样本,具有耗时的手动标签。合成和实际表面缺陷图像的实验结果表明,该方法在主观和客观实验方面优于一些最先进的方法。

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