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Combination of relief feature selection and fuzzy K-nearest neighbor for plant species identification

机译:地形特征选择与模糊K近邻相结合的植物物种识别

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Plant species identification is a digitally challenging object for a better classification such as in taxonomy resources problem. Feature selection as a preprocessing technique in data mining help to identify the prominent attributes of herbal leave with higher dimensioned data set. For this purpose, Relief Feature Selection algorithm was utilized for the improvement of Fuzzy K-Nearest Neighbor (Fuzzy K-NN) classification on shape, texture, and margins on the leaves. Best result was obtained on 73.48% of accuracy rate for 363 observation data. The trend of accuracy rate was directly imposed by the number of features. However, most of this combination was better than conventional K-NN alone.
机译:植物种类识别是数字化挑战性的对象,可以更好地进行分类,例如分类资源问题。特征选择是数据挖掘中的一种预处理技术,有助于识别尺寸较大的数据集所具有的草药叶的突出属性。为此目的,使用救济特征选择算法来改进叶子的形状,纹理和边缘上的模糊K最近邻(Fuzzy K-NN)分类。 363个观测数据的准确率达到73.48%,获得了最佳结果。准确率的趋势直接取决于特征的数量。但是,大多数这种组合都比传统的K-NN更好。

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