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Study of defect feature dimension reduction based on principal component analysis

机译:基于主成分分析的缺陷特征尺寸约简研究

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Feature extraction is an important link of visual defects detection, for it can transform high dimension space of image data into low dimension space of feature. But for the pattern classifier, high dimension input will lead the increasing of identification complexity. Therefore, it is necessary to select one group of features that can most express the defect essential characteristics. Principal component analysis makes use of the thought of statistical variance, which can remove the correlation between the statistical variables and keep all or most of the information. With the example of steel plate surface defects detection, this paper studies the feature dimension reduction based on principal component analysis. Select 7 types steel plate surface defects, acquire 20 sample images from each defect and extract 128 eigenvalues from each sample image. The experiment results show that the principal component analysis can effectively remove the correlation between the feature e data, and keep the necessary information effectively.
机译:特征提取是视觉缺陷检测的重要环节,可以将图像数据的高维空间转换为特征的低维空间。但是对于模式分类器,高维输入将导致识别复杂度的增加。因此,有必要选择一组最能表达缺陷本质特征的特征。主成分分析利用了统计方差的思想,可以消除统计变量之间的相关性并保留所有或大部分信息。以钢板表面缺陷检测为例,在主成分分析的基础上研究了特征尺寸约简。选择7种类型的钢板表面缺陷,从每个缺陷中获取20个样本图像,并从每个样本图像中提取128个特征值。实验结果表明,主成分分析可以有效地消除特征e数据之间的相关性,并有效地保留必要的信息。

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