基于判别小波帧的纺织品缺陷分类

Xuezhi Yang, Jun Gao, G. Pang, N. Yung
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引用次数: 10

摘要

纺织产品的自动检测对缺陷分类提出了很高的要求。提出了一种基于判别小波帧的纺织品缺陷分类方法。利用小波帧表征纺织图像的多尺度纹理特性。为了更好地描述纺织品图像的潜在结构,本文提出了一种适合纺织品的小波框架,而不是使用标准的小波框架。基于判别特征提取(DFE)方法,以最小化分类误差为共同目标,同时设计小波帧和后端分类器。对466个疵点样本(含8类纺织品疵点)和434个非疵点样本进行了评价。与标准小波帧相比,所设计的判别小波帧大大提高了分类性能,分类准确率达到95.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Textile defect classification using discriminative wavelet frames
The classification of defects is highly demanded for automated inspection of textile products. In this paper, a new method for textile defect classification is proposed by using discriminative wavelet frames. Multiscale texture properties of textile image are characterized by its wavelet frames representation. For a better description of the latent structure of textile image, wavelet frames adapted to textile are generated rather than using standard ones. Based on discriminative feature extraction (DFE) method, the wavelet frames and the back-end classifier are simultaneously designed with the common objective of minimizing classification errors. The proposed method has been evaluated on the classification of 466 defect samples containing eight classes of textile defects, and 434 nondefect samples. In comparison with standard wavelet frames, the designed discriminative wavelet frames has been shown to largely improve the classification performance, where 95.8% classification accuracy was achieved.
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