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首页> 外文期刊>Turkish Journal of Agriculture & Forestry >Support vector machines in wood identification: the case of three Salix species from Turkey
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Support vector machines in wood identification: the case of three Salix species from Turkey

机译:木材识别中的支持向量机:来自土耳其的三种柳属物种

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摘要

The aim of this study was to use a support vector machine (SVM) for the first time as a predictive method for differentiating species of Salix wood through the biometric analysis of their anatomy using wood taken from basal disks of 3 species. The purpose of a SVM is to construct optimal decision boundaries among classes in a decision plane. A decision plane separates a set of objects having different class memberships. In this study, the decision plane has 3 different wood species. Timely and accurate identification of tree species can be crucial in forestry. The similarity of structures in wood anatomy across many species, especially in the case of Salix species, means that they cannot be differentiated anatomically using traditional methods. SVMcan be an effective tool for identifying similar taxa with a high percentage of accuracy. A SVM was used to differentiate Salix alba, Salix caprea, and Salix elaeagnos growing in Turkey. These Salix species are sufficiently similar that it is not possible to differentiate between them using traditional anatomical methods. However, a SVM was able to differentiate between the 3 species with a high degree of probability using the biometrics of wood anatomy. For the purposes of classification, a SVM with linear kernel function was designed; it attained an 80.6% success rate in the training group and a 95.2% success rate in the testing group. After feature selection, our SVM was able to classify the 3 species with notable success. If the number of samples were increased, the SVM would return more precise classification results.
机译:这项研究的目的是首次使用支持向量机(SVM)作为柳柳属木材种类的预测方法,该方法通过使用取自3种基盘的木材对木材的解剖特征进行生物特征分析。 SVM的目的是在决策平面中的类之间构造最佳决策边界。决策平面分离具有不同类成员资格的一组对象。在这项研究中,决策平面具有3种不同的木材种类。及时准确地确定树木种类对于林业至关重要。在许多物种中,特别是在柳属物种中,木材解剖结构的相似性意味着无法使用传统方法在解剖学上对它们进行区分。 SVM可以是一种有效的工具,可以高度准确地识别相似的分类单元。支持向量机用于区分在土耳其生长的柳柳,柳柳和柳柳。这些柳属物种足够相似,因此无法使用传统的解剖方法对其进行区分。但是,SVM可以使用木材解剖学的生物特征识别技术以很高的概率区分这3个物种。为了进行分类,设计了具有线性核函数的支持向量机。它在训练组中的成功率为80.6%,在测试组中的成功率为95.2%。选择特征后,我们的支持向量机能够对3种进行分类,并取得了显著成功。如果样本数量增加,则SVM将返回更精确的分类结果。

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