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首页> 外文期刊>Textile Research Journal >Clustering Analysis for Cotton Trash Classification
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Clustering Analysis for Cotton Trash Classification

机译:棉花垃圾分类的聚类分析

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摘要

Raw cotton may contain various kinds of trash, such as leaf, bark, and seed coat particles. The content of each of these trash categories is usefu information for finding more efficient cleaning processes and predicting the quality of the finished products. This paper addresses the importance of using chromatic and geometric features of tash for trash description, and present three different claustering methods that automatically classify trash based on the feature measurements. Compared with the geometric attributes of trash, such as size and shape, color attributes are less changeable during harvesting and ginning of cotton and are therfore more reliable and descriptive in categorizing trash. Three clustering methods--sum of squares, fuzzy, and neural network--prove effective for trash classification. Sum of squares clustering and fuzzy clustering require iterative computations and generate comparable classification accuracy. Neural network clustering yields the highest accuracy, but it needs more computational time for network traninig.
机译:原棉可能包含各种垃圾,例如叶,树皮和种皮颗粒。这些垃圾类别中的每一个的内容都是有用的信息,用于查找更有效的清洁过程并预测最终产品的质量。本文讨论了使用色粉的色度和几何特征进行垃圾描述的重要性,并提出了三种不同的聚类方法,这些方法可根据特征量度对垃圾进行自动分类。与垃圾的几何属性(例如大小和形状)相比,颜色属性在棉花收获和轧花过程中变化较小,因此在分类垃圾时更可靠和更具描述性。三种聚类方法-平方和,模糊和神经网络-被证明对垃圾分类有效。平方和和模糊聚类的总和需要迭代计算并产生可比的分类精度。神经网络聚类产生最高的准确性,但需要更多的计算时间来进行网络转移。

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