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A Novel On-line Paper Defect Classification Method Based on Multi-representatives Classification

机译:基于多代表分类的在线纸张缺陷分类新方法

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摘要

Due to mass paper images and large amounts of noise in a paper image for a on-line paper detection system, this paper presents a novel method of on-line paper defect detection based on Multi-representatives Classification (MRC). First of all, using the background subtraction method is used to rapidly identify those papers with defects from mass on-line papers. Afterwards, pixels of paper defect images are clustered to segmentalize defect regions, and LOG operator is used for edge extraction. On the basis of these, characteristic value of paper defect are extracted. Finally 8 kinds of paper defects are classified by using multi-representatives classification, the classification complexity of which is O(n). The experimental results showed that the method could quickly and accurately classify 8 kinds of paper defects, thus the method can meet the requirement of on-line paper defect detection.
机译:由于在线检测系统中纸张图像质量高,且纸张图像中存在大量噪声,因此提出了一种基于多代表分类法的在线纸张缺陷检测新方法。首先,使用背景减法来快速识别大量在线论文中存在缺陷的那些论文。之后,将纸张缺陷图像的像素聚类以对缺陷区域进行分割,然后使用LOG运算符进行边缘提取。在此基础上,提取出纸张缺陷的特征值。最后采用多代表分类法对8种纸张缺陷进行分类,分类复杂度为O(n)。实验结果表明,该方法能够快速,准确地对8种纸张缺陷进行分类,可以满足在线纸张缺陷检测的要求。

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