基于小波帧和最小分类误差训练的织物缺陷分类

Xuezhi Yang, G. Pang, N. Yung
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引用次数: 24

摘要

将基于小波帧的特征提取器设计与基于欧氏距离的分类器设计相结合,提出了一种织物缺陷分类的新方法。小波帧分解输出处的通道方差用于表征织物图像的每个非重叠窗口。利用线性变换矩阵的特征提取器提取面向分类的特征。利用基于欧几里得距离的分类器,将织物图像的每个不重叠窗口分配到相应的类别中。将特征提取器的设计与基于最小分类误差(MCE)训练方法的分类器设计相结合,实现了分类误差的最小化。对包含9类织物缺陷的329个缺陷样本和328个非缺陷样本进行了分类评估,分类准确率达到93.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fabric defect classification using wavelet frames and minimum classification error training
This paper proposes a new method for fabric defect classification by incorporating the design of a wavelet frames based feature extractor with the design of a Euclidean distance based classifier. Channel variances at the outputs of the wavelet frame decomposition are used to characterize each nonoverlapping window of the fabric image. A feature extractor using linear transformation matrix is further employed to extract the classification-oriented features. With a Euclidean distance based classifier, each nonoverlapping window of the fabric image is then assigned to its corresponding category. Minimization of the classification error is achieved by incorporating the design of the feature extractor with the design of the classifier based on minimum classification error (MCE) training method. The proposed method has been evaluated on the classification of 329 defect samples containing nine classes of fabric defects, and 328 nondefect samples, where 93.1% classification accuracy has been achieved.
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