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Automatic Classification of Wood Defects Using Support Vector Machines

机译:使用支持向量机对木材缺陷进行自动分类

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This paper addresses the issue of automatic wood defect classification. We propose a tree-structure support vector machine (SVM) to classify four types of wood knots by using images captured from lumber boards. Simple and effective features are proposed and extracted by first partitioning the knot images into 3 distinct areas, followed by applying an order statistic filter to yield an average pseudo color feature in each area. Excellent results have been obtained for the proposed SVM classifier that is trained by 800 wood knot images. Performance evaluation has shown that the proposed SVM classifier has resulted in an average classification rate of 96.5% and false alarm rate of 2.25% over 400 test knot images. Our future work includes more extensive tests on large data set and the extension of knot types.
机译:本文解决了木材缺陷自动分类的问题。我们提出了一种树状结构支持向量机(SVM),通过使用从木板捕获的图像对四种类型的木结进行分类。通过首先将结图像划分为3个不同的区域,然后应用顺序统计过滤器以在每个区域中产生平均伪彩色特征,来提出和提取简单有效的特征。对于由800个木结图像训练的SVM分类器,已获得了出色的结果。性能评估表明,所提出的SVM分类器在400个测试结图像上的平均分类率为96.5%,错误警报率为2.25%。我们未来的工作包括对大数据集和结类型扩展进行更广泛的测试。

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