纺织工业质量控制中织物疵点检测技术分析

Aarva Mehta, Reetu Jain
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引用次数: 0

摘要

长期以来,纺织行业一直依靠人工检查员来检测和分类织物缺陷,这可能是一个耗时且容易出错的过程。为了解决这一挑战,开发了一种自动化和实时织物缺陷检测系统,该系统使用机器学习算法和先进的图像处理技术来检测和分类各种类型的织物缺陷。该系统能够实时捕获织物表面的高分辨率图像,从而能够快速准确地识别缺陷。它已经在各种织物材料上进行了广泛的测试,并证明了缺陷检测的高准确率。该系统的自动化和实时性使其成为纺织品生产质量控制的理想工具,减少了对人工检验员的需求,提高了检验过程的整体效率。该系统有可能通过提高纺织产品的质量,同时降低成本和提高生产率来彻底改变纺织工业。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analysis of Fabric Defect Detection Techniques for Textile Industry Quality Control
The textile industry has long relied on human inspectors to detect and classify fabric defects, which can be a time-consuming and error-prone process. To address this challenge, an automated and real-time fabric defect-detecting system has been developed that uses machine learning algorithms and advanced image processing techniques to detect and classify various types of fabric defects. The system is capable of capturing high-resolution images of the fabric surface in real time, enabling swift and accurate identification of defects. It has been extensively tested on a wide range of fabric materials and has demonstrated high accuracy rates in defect detection. The automated and real-time nature of the system makes it an ideal tool for quality control in textile production, reducing the need for human inspectors and improving the overall efficiency of the inspection process. This system has the potential to revolutionize the textile industry by improving the quality of textile products while reducing costs and increasing productivity.
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