基于卷积神经网络的不同织物图案和线密度分类新方法

E. Gülteki̇n, H. Çelik, H. K. Kaynak
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引用次数: 0

摘要

由微长丝制成的织物优于传统纤维织物,因为它们具有重量轻、耐用、防水、防风、透气性和悬垂性等特性。由微长丝纱线制成的密实织物由于纱线内部纤维之间和纱线之间的孔隙尺寸小而具有非常紧凑的结构。用视觉评价来区分密织织物的结构几乎是非常困难的。因此,自动判断这类织物的织构性能差异是非常重要的。随着图像采集技术和图像处理方法的发展,织物的纹理分类可以比目测检测更快、更可靠。本研究采用theResNet-50算法实现了高密度微长丝机织物根据不同纹理类型和线密度的分类。所得结果以混淆矩阵形式进行评价。CNN算法的分类准确率平均为0.95。
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A NEW APPROACH FOR CLASSIFICATION OF DIFFERENT WOVEN FABRIC PATTERNS AND THREAD DENSITIES WITH CONVOLUTIONAL NEURAL NETWORKS
Fabrics produced from microfilaments are superior to conventional fiber fabrics, due to their properties such as light weight, durability, waterproofness, windproofness, breathability and drapeability. Tightly woven fabrics produced from microfilament yarns have a very compact structure due to small pore dimensions between the fibers inside the yarns and between yarns themselves. It is almost very difficult to distinguish the structures of densely woven fabrics with the visual evaluation. Therefore, it is very important to automatically determine the differences in the texture properties of such fabrics. Thanks to the developments in image acquision technology and image processing methods, the texture classification of fabrics can be estimated more quickly and reliably than visual inspection. In this study, the classification of high-density microfilament woven fabrics according to different texture types and thread density was achieved by using the ResNet-50 algorithm. The obtained results were evaluated in a confusion matrix form. The classification accuracy of the CNN algorithm was measured as 0.95 on average.
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