Research on cotton and flax fiber identification based on multi-scale features of the texture and Gaussian process classification

Junjie Wei, Hai Bi, Hong Yao, Fangxin Chen
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Abstract

Image-based automatic identification of the cotton and flax fibers is extremely significant for the content quantitatively assaying in the textile industry. In this paper, a fiber identification method based on multi-scale features of the texture and Gaussian Process Classification (GPC) is proposed. Firstly, the images of the fibers are collected by an optical microscope and a set of image preprocessing approaches including image enhancement, local binarization, morphological processing is utilized to extract the fibers from the background. Next, the single fiber images are analyzed by the Discrete Wavelet Transform (DWT) and obtain the multiple-scale features of the texture. Then, the Gray Level Co-occurrence Matrix (GLCM) is applied to describe the spatial distribution features. Subsequently, extract the statistical feature from the GLCM and obtain a 42- dimensional feature vector that contains the fiber texture. Finally, 2610 images are randomly divided into train set and test set, and the recognition expert system based on the GPC is trained and validated accordingly. The test results on the test set showed that the classification precision - recall for cotton and flax fibers reached 96% - 97% and 97% - 95%, respectively. The method proposed in this paper can help workers quickly identify cotton fibers and flax fibers for further work, such as calculating the blending ratio of blended fabrics.
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基于纹理多尺度特征和高斯过程分类的棉麻纤维识别研究
棉麻纤维的图像自动识别对于纺织工业中含量的定量分析具有重要意义。提出了一种基于纹理多尺度特征和高斯过程分类(GPC)的纤维识别方法。首先,利用光学显微镜采集纤维图像,利用图像增强、局部二值化、形态学处理等一系列图像预处理方法从背景中提取纤维;其次,对单纤维图像进行离散小波变换(DWT)分析,得到纹理的多尺度特征;然后,采用灰度共生矩阵(GLCM)来描述空间分布特征。然后,从GLCM中提取统计特征,得到包含纤维纹理的42维特征向量。最后,将2610张图像随机分为训练集和测试集,对基于GPC的识别专家系统进行训练和验证。在测试集上的测试结果表明,棉纤维和亚麻纤维的分类精度和召回率分别达到96% ~ 97%和97% ~ 95%。本文提出的方法可以帮助工人快速识别棉纤维和亚麻纤维,以便进一步的工作,如计算混纺织物的混纺比。
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