Fabric yarn detection based on improved fast R-CNN model

Haiyan Xu
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Abstract

With the rapid development of modern computer technology, and gradually combined with the textile industry, the application of modern computer technology in the field of textile is increasingly extensive, which makes textile production gradually move towards the road of automation development. This paper proposes an automatic detection method of simple weave fabric density based on computer image vision. Computer vision and digital image processing technology are used to analyze and identify the simple weave fabric's warp and weft yarn information and calculate the fabric density. To avoid the phenomenon of warp and weft yarn skew, a method of fabric skew correction based on the Radon transform is proposed. The optimal decomposition order of these four fabrics is k = 2, k = 5, and k = 3. The decomposition series is k. It is found that the relative error of both warp and weft density is about 1.00%. Most of the data obtained by the method of correlation coefficient curve to determine the optimal decomposition series are consistent with the results of the energy curve method. The relative error of the density test results of No. 3 fabric, No. 6 fabric, and No. 7 fabric is higher than 10%, and the relative error of No. 3 fabric is the highest, reaching 66%. This shows serious errors in these three fabrics' warp and weft density. To solve the problems of simple weave fabric density detection, the corresponding algorithm is used to solve the problems. Finally, good results are obtained, which verifies the feasibility of this method. It is significant to realize the automatic measurement of fabric density in textile factories.
基于改进快速R-CNN模型的织物纱线检测
随着现代计算机技术的迅速发展,并逐渐与纺织工业相结合,现代计算机技术在纺织领域的应用日益广泛,这使得纺织生产逐渐走向自动化发展的道路。提出了一种基于计算机图像视觉的单织织物密度自动检测方法。利用计算机视觉和数字图像处理技术,对简单织物的经纬纱线信息进行分析识别,并计算织物密度。为了避免经纬纱线歪斜现象,提出了一种基于拉东变换的织物歪斜校正方法。这四种织物的最优分解顺序为k = 2、k = 5、k = 3。分解级数为k,发现经纬密度的相对误差均在1.00%左右。用相关系数曲线法确定最优分解序列得到的大部分数据与能量曲线法的结果一致。3号织物、6号织物、7号织物密度测试结果的相对误差均大于10%,其中3号织物的相对误差最大,达到66%。这表明这三种织物的经纬密度存在严重误差。针对简单织物密度检测存在的问题,采用相应的算法进行检测。最后,得到了较好的结果,验证了该方法的可行性。实现织物密度的自动测量对纺织企业具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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