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An improved random forest classifier for image classification

机译:改进的随机森林分类器用于图像分类

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This paper proposes an improved random forest algorithm for image classification. This algorithm is particularly designed for analyzing very high dimensional data with multiple classes whose well-known representative data is image data. A novel feature weighting method and tree selection method are developed and synergistically served for making random forest framework well suited to classify image data with a large number of object categories. With the new feature weighting method for subspace sampling and tree selection method, we can effectively reduce subspace size and improve classification performance without increasing error bound. Experimental results on image datasets with diverse characteristics have demonstrated that the proposed method could generate a random forest model with higher performance than the random forests generated by Breiman's method.
机译:提出了一种改进的随机森林图像分类算法。该算法专门设计用于分析具有多个类的超高维数据,这些类的众所周知的代表性数据是图像数据。开发了一种新颖的特征加权方法和树选择方法,并协同工作,以使随机森林框架非常适合对具有大量对象类别的图像数据进行分类。借助用于子空间采样的新特征加权方法和树选择方法,我们可以有效地减少子空间大小并提高分类性能,而不会增加错误范围。在具有各种特征的图像数据集上的实验结果表明,与Breiman方法生成的随机森林相比,该方法可以生成性能更高的随机森林模型。

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