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Optimizing Woven Curtain Fabric Defect Classification using Image Processing withArtificial Neural Network Method at PT Buana Intan Gemilang

机译:PT Buana Intan Gemilang的人工神经网络图像处理优化机织窗帘织物疵点分类

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The textile industry is one of the industries that provide high export value by occupying the third position in Indonesia. The process of inspection on traditional textile enterprises by relying on human vision that takes an average scanning time of 19.87 seconds. Each roll of cloth should be inspected twice to avoid missed defects. This inspection process causes the buildup at the inspection station. This study proposes the automation of inspection systems using the Artificial Neural Network (ANN). The input for ANN comes from GLCM extraction. The automation system on the defect inspection resulted in a detection time of 0.56 seconds. The degree of accuracy gained in classifying the three types of defects is 88.7%. Implementing an automated inspection system results in faster processing time.
机译:纺织业是通过在印度尼西亚排名第三而提供高出口价值的产业之一。依靠人类视觉对传统纺织企业进行检查的过程,平均扫描时间为19.87秒。每卷布应检查两次,以避免遗漏缺陷。此检查过程会导致在检查站堆积。这项研究提出了使用人工神经网络(ANN)的检查系统的自动化。 ANN的输入来自GLCM提取。缺陷检查的自动化系统的检测时间为0.56秒。三种缺陷分类的准确度为88.7%。实施自动检查系统可以缩短处理时间。

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