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Wood Materials Defects Detection Using Image Block Percentile Color Histogram and Eigenvector Texture Feature

机译:使用图像块百分位颜色直方图和特征向量纹理特征的木材缺陷检测

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To automatic detect wood surface defects, a method based on image block percentile color histogram and eigenvector texture feature classification is proposed. Firstly, a wood surface image is divided into several same size image blocks. Secondly, for each image block, a percentile color histogram is calculated as image block color feature. Meanwhile, singular value decomposition (SVD) is adopted to extract k-max eigenvectors as image block texture feature. Then the percentile color histogram and eigenvector texture feature is combined to a feature vector for image block representation. Finally, a support vector machine (SVM) classifier is trained and used to determine which image block is sound or defect wood. The experimental results show that the proposed method can effectively detect wood surface defects, especially the knot type defects.
机译:为了自动检测木材表面缺陷,提出了一种基于图像块百分位色直方图和特征向量纹理特征分类的方法。首先,木表面图像被分成几个相同的图像块。其次,对于每个图像块,百分位子直方图被计算为图像块颜色特征。同时,采用奇异值分解(SVD)以提取K-Max特征向量作为图像块纹理特征。然后,百分位颜色直方图和特征向量纹理特征组合到图像块表示的特征向量。最后,培训支持向量机(SVM)分类器并用于确定哪些图像块是声音或缺陷木材。实验结果表明,该方法可以有效地检测木材表面缺陷,尤其是结型缺陷。

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