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Optimizing Woven Fabric Defect Detection Using Image Processing and Fuzzy Logic Method at PT. Buana Intan Gemilang

机译:利用PT的图像处理和模糊逻辑方法优化织物缺陷检测。 Buana Intan Gemilang

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The development of textile industry which 3rd position in the largest export values in Indonesia prove that the quality of textile must be one of factors that should be considered for all of textile companies. Buana Intan Gemilang is one of the companies that produce woven fabric. This company s produce curtain woven fabric. Quality is the most important factor to reach high level customer satisfaction. To get the best quality of product needs to consider their quality control. According to inspection process in Buana Intan Gemilang, manual inspection for woven fabric defect detection need 19.87 second for average inspection time. Therefore, unbalance of production volume with inspection process cause the bottle neck in inspection process. In this research, proposed designing automated fabric inspection using image processing and Fuzzy Logic Model. This processed uses GLCM as feature extraction with three parameters are cluster shade, cluster prominence, and number of object. The proposed fabric inspection using Fuzzy Logic implemented with MATLAB provides better result in identifying fabric defect and optimizing process time. This research using 120 training data, 80 offline test data, and 80 real time test data. Identification automation defect of woven fabric test data can produce accuracy 97, 5% and averaging process time 1.15 second. This result is better than manually inspection process that took 19.87 second for scanning defect of woven fabric.
机译:纺织业的发展在印度尼西亚最大的出口价值中的第三次职位证明了纺织品的质量必须是所有纺织公司应该考虑的因素之一。 Buana Intan Gemilang是生产织物的公司之一。这家公司生产窗帘编织面料。质量是达到高层客户满意度的最重要因素。为了获得最优质的产品,需要考虑其质量控制。根据Buana Intan Gemilang的检查过程,手动检查编织面料缺陷检测需要19.87秒,平均检查时间。因此,具有检测过程的产量不平衡,导致瓶颈检查过程中。在本研究中,建议使用图像处理和模糊逻辑模型设计自动织物检查。此处理使用GLCM作为具有三个参数的特征提取,是集群阴影,群集突出和对象数。采用MATLAB实现的模糊逻辑的建议织物检测提供了更好的导致识别面料缺陷和优化过程时间。本研究使用120培训数据,80个离线测试数据和80个实时测试数据。织物测试数据的识别自动化缺陷可以产生精度为97,5%和平均处理时间1.15秒。该结果优于手动检查过程,该过程占据了19.87秒的扫描织物的缺陷。

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