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Weave pattern recognition by measuring fiber orientation with Fourier transform

机译:通过使用傅立叶变换测量纤维取向来编织图案识别

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摘要

An effective method based on measuring the fiber orientation of yarn floats with two-dimensional Fourier transform (2-D FFT) is proposed to recognize the weave pattern of yarn-dyed fabric in the high-resolution image. The recognition process consists of four main steps: 1. High-resolution image reduction, 2.Fabric image skew correction, 3.Yarn floats localization, 4. Yarn floats classification. Firstly, the high-resolution image is reduced by the nearest interpolation algorithm. Secondly, the skew of the fabric image is corrected based on Hough transform. Thirdly, the yarn floats in the fabric image is localized by the yarns segmentation method based on the mathematical statistics of sub-images. Fourthly, the high-resolution image is corrected and its yarns are segmented successively according to the inspection information of the reduced image. The fiber orientations are detected by 2-D FFT, and the yarn floats are classified by k-means clustering algorithm. Experimental results and discussions demonstrate that, by measuring the fiber orientation of yarn floats, the proposed method is effective to recognize the yarn floats and the weave pattern for yarn-dyed, solid color, and gray fabrics.
机译:提出了一种基于二维傅里叶变换(2-D FFT)测量纱浮体纤维取向的有效方法,以识别高分辨率图像中的色织织物的织造图案。识别过程包括四个主要步骤:1.高分辨率图像缩小; 2.织物图像偏斜校正; 3.纱线浮子定位; 4.纱线浮子分类。首先,通过最近的插值算法缩小高分辨率图像。其次,基于霍夫变换校正织物图像的偏斜。第三,基于子图像的数学统计,通过纱线分割方法对漂浮在织物图像中的纱线进行定位。第四,根据缩小图像的检查信息,对高分辨率图像进行校正,并对其纱线进行连续分割。通过2-D FFT检测纤维取向,并通过k均值聚类算法对纱线浮漂进行分类。实验结果和讨论表明,通过测量纱浮子的纤维取向,该方法可有效地识别色织,纯色和灰色织物的纱浮子和编织图案。

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