基于图像处理的织物故障自动检测

A. Khowaja, Dinar Nadir
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引用次数: 4

摘要

本文综述了近年来发展起来的织物故障自动检测方法。织物故障检测是自动化领域的热门课题,而质量控制是纺织工业的重要特征之一。通过对不同类型的常见织物疵点的图案图像使用不同的技术来评估投影思想的性能。此外,还利用模型自动化规范系统对检测方法进行了实时评估。本文将有助于图像处理和计算机视觉领域的研究人员和从业人员了解不同缺陷检测方法的独特性。识别从图像采集设备接收数字织物图像,并使用恢复和阈值方法将其转换为二值图像。这项研究提出了一种减少体力消耗的技术。该图像处理方法使用“MATLAB 7.10”软件进行。因此,本研究采用系统视觉方法的纺织品故障检测器进行图像处理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Fabric Fault Detection Using Image Processing
This paper provides an overview of automatic fabric fault detection approaches that have been developed in recent years. Fabric fault detection is very popular topic of automation moreover quality control is one of the important features in textile industry. The performance of the projected idea is evaluated by using different techniques of patterned fabric images with different types of common fabric defects. Moreover detection methods were also evaluated in real time using a model automation specification system. This research paper will be useful for both researchers and practitioners in the field of image processing and computer vision to understand the uniqueness of the different defect detection methods. The recognition receives a digital fabric image from the image acquisition device and transforms it to a binary image using the restoration and threshold methods. This research presents a technique that decreases physical exertion. This image processing method was performed using “MATLAB 7.10”. Therefore, this study uses a textile fault detector with a systematic vision approach for image processing.
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