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Fabric Pilling Hairiness Extraction From Depth Images Based on the Predicted Fabric Surface Plane

机译:基于预测织物表面平面的织物毛毛毛毛性提取

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A new approach for extracting the hairiness from fabric based on the predicted fabric surface plane is presented in this paper to extract the hairiness from the depth image. The depth from focus (DFF) technique is utilized in this study to establish the depth image of the pilled fabrics by using a series of image layers captured under a microscope. A pilled fabric depth image provides information on the hairiness and the fabric surface, and the hairiness is located above the fabric surface. However, the depth value of the fabric surface covered with hairiness cannot be directly obtained. Therefore, for hairiness extraction, a predicted plane of the fabric surface is fitted by selecting several base points on the fabric surface. The target above the predicted plane will be considered as hairiness and will be extracted. The oversegmentation method based on the mean shift algorithm is used in the study to select the base points of the fabric surface. First, several seed points are marked along the Sobel edges; then, several oversegmented areas are formed after the growth of the seed points, which are called split pieces in this paper. The split pieces of the fabric surfaces are selected as the base points according to the depth value as well as the spatial direction of each split piece. Finally, the predicted plane of the fabric surface is established using these base points. The results of significance testing show that is it reasonable to assume that the fabric surface can be expressed as a plane. The results of the residual examination show that the predicted plane can correctly calculate the depth value (z) of the fabric surface at any plane position (x, y). The extracted hairiness images show that hairiness can be correctly and completely obtained through the predicted plane.
机译:本文提出了一种基于预测的织物表面平面从织物中提取毛羽的新方法,以从深度图像中提取毛羽。本研究中使用来自聚焦(DFF)技术的深度来通过使用在显微镜下捕获的一系列图像层来建立丸织物的深度图像。丸剂织物深度图像提供有关毛羽和织物表面的信息,并且毛毛位于织物表面上方。然而,不能直接获得有毛毛的织物表面的深度值。因此,对于毛眼提取,通过在织物表面上选择几个基点来装配织物表面的预测平面。预测平面上方的目标将被视为毛毛,并将被提取。基于平均移位算法的过分解除方法用于研究选择织物表面的基点。首先,几个种子点沿着Sobel边缘标记;然后,在种子点的生长之后形成了几个过度的区域,这些区域被称为本文的分割件。根据深度值以及每个分体件的空间方向选择织物表面的分开片。最后,使用这些基点建立织物表面的预测平面。显着性测试的结果表明,假设织物表面可以表示为平面是合理的。残余检查的结果表明,预测平面可以在任何平面位置(x,y)处正确地计算织物表面的深度值(z)。提取的毛眼图像表明,可以通过预测平面正确且完全获得毛毛。

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