基于人工神经网络和决策树的椋鸟图像分类

Aviv Yuniar Rahman
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引用次数: 1

摘要

欧椋鸟是印度尼西亚著名的动物。因此,在印度尼西亚,许多人饲养和培育欧椋鸟。印度尼西亚几乎每个地区都有不同种类的椋鸟。因此,研究人员使用人工神经网络和决策树对椋鸟进行分类。这两种方法都有助于获得椋鸟分类所产生的精度值。在本次对比中,人工神经网络的准确率为0.870,最高查全率为0.600,f-measure为0.865,分割比为90:10时准确率为93%。决策树对欧椋鸟的特征、形状和颜色进行了分类,其纹理值最高,精度为1000,召回率达到1000,f-measure达到1000,准确率达到100%,分割比为90:10。实验结果表明,该决策树可以基于3个特征级别对椋鸟图像进行分类。在这种情况下,可以证明决策树对椋鸟图像的分类更加准确。该决策树方法可以使椋鸟物种分类更容易找到正确的准确率值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Classification of Starlings Using Artificial Neural Network and Decision Tree
Starlings are famous animals in Indonesia. Therefore, many in Indonesia maintain and cultivate starlings. Almost every region in Indonesia has different types of starlings. Therefore, the researchers used Artificial Neural Networks and Decision Trees to classify starlings. Both methods are useful for obtaining the accuracy values generated in the classification of the starlings. In this comparison, the Artificial Neural Network has a precision of 0.870, the highest recall value is 0.600, the f-measure is 0.865, and the accuracy is 93% at a split ratio of 90:10. The Decision Tree has resulted in the classification of starlings on features, shapes, and colours with the highest texture value at a precision of 1,000, recall reaching 1,000, f-measure reaching 1,000, and accuracy reaching 100% at a split ratio 90:10. The tests carried out show that the Decision Tree can classify starling images based on 3 feature levels. And in this case, it can be proven that the Decision Tree is more accurate in classifying starlings images. The method of this Decision Tree can make it easier to find the right accuracy value in classifying starling species.
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