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Fabric Classification Based on Recognition Using a Neural Network and Dimensionality Reduction

机译:基于神经网络识别和降维的织物分类

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摘要

Fabric classification plays an important role in the textile industry. In this paper, two fabric classification methods, the neural network and dimensionality reduction, are proposed to automatically classify fabrics based on measured hand properties. The methods are independent and reinforce each other. The first method adopts a neural network to recognize the category of an unknown fabric. In the second method, a dimensionality reduction technique is applied to reduce the dimensionality of the measured properties of input fabrics from sixteen dimensions to two. The reduced features are then plotted in a two-dimensional coordinate system to visualize and verify the classification results of the neural network. In experiments conducted to verify the validity of our proposed approach, fabric data are expressed in the form of hand properties extracted from the KES-FB system (Kawabata's evaluation system for fabrics). These experiments confirm the feasibility and efficiency of our approach with a wide variety of fabrics.
机译:织物分类在纺织工业中起着重要作用。本文提出了两种织物分类方法,即神经网络和降维,以根据测得的手性自动对织物进行分类。这些方法是独立的,并且相互补充。第一种方法采用神经网络来识别未知面料的类别。在第二种方法中,应用降维技术将输入织物的测量特性的维数从十六维减少到二维。然后将缩小的特征绘制在二维坐标系中以可视化并验证神经网络的分类结果。在为验证我们提出的方法的有效性而进行的实验中,织物数据以从KES-FB系统(Kawabata的织物评估系统)中提取的手感形式表示。这些实验证实了我们的方法适用于多种织物的可行性和效率。

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