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首页> 外文期刊>Journal of Computers >Half-Against-Half Structure with SVM and k-NN Classifiers in Benthic Macroinvertebrate Image Classification
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Half-Against-Half Structure with SVM and k-NN Classifiers in Benthic Macroinvertebrate Image Classification

机译:底栖半耳机图像分类中的半反对半结构和k-nn分类器

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—We investigated how Half-Against-Half Support Vector Machine (HAH-SVM) and Half-Against-Half k- Nearest Neighbour (HAH-KNN) methods succeed in the classification of the benthic macroinvertebrate images. Automated taxa identification of benthic macroinvertebrates is a slightly researched area and in this paper HAH-KNN was for the first time applied to this application area. The main problem, when Half-Against-Half structure is used, is to find the right way to divide the classes in nodes. This problem was solved by using two different approaches. Firstly, we applied the Scatter method for the class division problem. Secondly, we formed the class divisions in a Half- Against-Half structure by a random choice. We performed extensive experimental tests with four different feature sets and tested every feature set with seven different kernel functions in the case of HAH-SVM. Furthermore, HAHKNN was tested with four measures. The tests showed that by the Scatter method and random choice formed HAH-SVMs performed the classification problem very well obtaining over 95% accuracy while with HAH-KNN above 92% accuracy was achieved. Moreover, the 7D and 15D feature sets together with the RBF kernel function are good choices for this classification task when HAH-SVM was used and 15D feature set, when HAH-KNN was used. Generally speaking, Half-Against-Half structure is a promising multiclass extension for SVM and an interesting variant for k-NN classifier.
机译:- 我们研究了半反对半支撑载体机(HAH-SVM)和半逆半的K-最近邻(HAH-KNN)方法在底栖大型椎骨图像的分类中成功。底栖大型近似脊椎动物的自动分类征鉴定是一个略微研究的区域,并且在本文中,Hah-Knn首次应用于该应用领域。主要问题是,当使用半反对半结构时,可以找到划分节点中类的正确方法。使用两种不同的方法解决了这个问题。首先,我们应用了派分分裂问题的散点方法。其次,我们通过随机选择在半逆半结构中形成了班级。我们使用四种不同的功能集进行了广泛的实验测试,并在HAH-SVM的情况下测试了具有七种不同内核功能的每个功能集。此外,Hahknn用四种措施进行了测试。测试表明,通过散射方法和随机选择形成的HAH-SVMS执行的分类问题非常好,获得超过95 %的精度,同时实现了高于92的HAH-KNN。此外,当使用HAH-KNN时,7D和15D特征与RBF内核函数一起与RBF内核功能一起选择该分类任务的良好选择。一般而言,半反对半结构是用于SVM的有希望的多字母扩展,以及用于K-NN分类器的有趣变种。

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