在沙子中寻找误差的不可控系统

Q4 Engineering Tekstil ve Muhendis Pub Date : 2020-12-30 DOI:10.7216/1300759920202712005
Fatma Günseli Yaşar Çiklaçandir, Semih Utku, H. Özdemir
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引用次数: 0

摘要

织物在织造过程中或织造后的缺陷会降低织物的质量。随着技术的发展,织物中出现缺陷的频率有所下降,但仍在发生。在检测织物缺陷的过程中,质量控制单元尝试检测织物的缺陷。这个过程既耗费个人时间,也会导致代价高昂的个人错误。出于这个原因,已经在研究中提出了在计算机控制下实现和自动化该过程的解决方案。在这项研究中,将织物图像划分为大小相等的块,以查明织物中是否存在任何缺陷。通过对图像的每个块应用特征提取方法提取的特征被插入到K-means聚类算法中。将两种不同的方法(灰度共形矩阵和中值差分)应用于特征提取,并对其性能进行了比较。当使用灰度共生矩阵时,缺陷检测的成功率提高到97.99%。当使用中位数差异时,检测缺陷的成功率提高到86.91%。此外,此外,当分别计算纬纱方向上的缺陷和经向上的缺陷的成功率时,得出的结论是,纬纱方向的缺陷比经向方向的缺陷更容易发现。
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Kumaşlarda Hatayı Yerel Olarak Arayan Denetimsiz Bir Sistem
Defects in the fabrics during or after weaving reduce the quality of them. With the development of technology, the frequency of the defects seen in fabrics has decreased, but still occurs. In the process of detecting fabric defects, the quality control unit tries to detect fabric defects. This process is both personal and time consuming, leading to costly and personal Errors. For this reason, solutions have been proposed in studies to carry out and automate the process under computer control. In this study, fabric images are divided into blocks of equal sizes to find out whether there are any defects in the fabrics. The features, which are Extracted by applying feature extraction method to each block of the image, are inserted into the K-means clustering algorithm. Two different methods are applied for feature extraction (gray level co-formation matrix and median difference) and their performances have been compared. The success rate of detecting the defect increases up to 97.99% when the gray level co-occurrence matrix is used. The success rate of detecting the defect increases up to 86.91% when the median differences are used. In addition, In addition, when the success rates are calculated separately for the defects in the weft direction and the defects in the warp direction, it is concluded that the defects in the weft direction are easier to find than the defects in the warp direction.
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来源期刊
Tekstil ve Muhendis
Tekstil ve Muhendis Engineering-Industrial and Manufacturing Engineering
CiteScore
0.40
自引率
0.00%
发文量
12
期刊最新文献
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