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Detection clustering analysis algorithm and system parameters study of the near-point multi-class foreign fiber

机译:近点多类异质光纤的检测聚类分析算法和系统参数研究

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摘要

In this paper, we investigate a detection algorithm for foreign fiber during the processing of cotton textile. By collecting a large number of samples, we determine the color model and establish its characteristic parameters of a foreign fiber. We found foreign fibers of multiple types (classes) and proposed a classification-recognition algorithm based on clustering analysis. The maximum error of the studied recognition algorithm is 0.012, which meets the requirement to recognize foreign fibers. Through many experiments, the optimal parameters for the foreign fiber detection system were determined, and the fiber recognition rates for different types were obtained. The lowest recognition rate is 85%. This is sufficiently high to reject foreign fibers and reach the standards of the textile industry. Experimental results show that foreign fiber clustering analysis algorithm is feasible, and it not only improves the quality of foreign fiber detection significantly, but also has high theoretical value and practical value.
机译:在本文中,我们研究了棉织物加工过程中异物纤维的检测算法。通过收集大量样本,我们确定颜色模型并建立其异物纤维的特征参数。我们发现了多种类型(类)的异类纤维,并提出了一种基于聚类分析的分类识别算法。所研究的识别算法的最大误差为0.012,满足了识别异物纤维的要求。通过多次实验,确定了异物纤维检测系统的最佳参数,并获得了不同类型的纤维识别率。最低识别率是85%。这足够高以拒绝异物纤维并达到纺织工业的标准。实验结果表明,异物聚类分析算法是可行的,不仅可以显着提高异物检测的质量,而且具有较高的理论价值和实用价值。

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