动物分类中的特征选择方法

H. SharathKumarY, D. DivyaC
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引用次数: 5

摘要

本文提出了一种基于最近邻分类器、概率神经网络和符号分类器的动物自动分类模型。采用最大区域合并分割方法对动物图像进行分割。从动物图像中提取Gabor特征。然后使用不同的特征选择算法(如顺序前向选择、顺序浮动前向选择、顺序向后选择和顺序浮动后向选择)选择有区别的纹理特征。为了证实所提出方法的有效性,我们在自己的25类动物数据集上进行了实验,包含2500个样本。该数据集有不同的动物物种,它们在不同的类别中具有相似的外观(小的类间变化),而在一个类别内具有不同的外观(大的类内变化)。此外,花卉的图像在不同的光线和气候条件下,姿态各异,背景杂乱。实验结果表明,符号分类器优于最近邻分类器和概率神经网络分类器。
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Feature Selection Approach in Animal Classification
In this paper, we propose a model for automatic classification of Animals using different classifiers Nearest Neighbour, Probabilistic Neural Network and Symbolic. Animal images are segmented using maximal region merging segmentation. The Gabor features are extracted from segmented animal images. Discriminative texture features are then selected using the different feature selection algorithm like Sequential Forward Selection, Sequential Floating Forward Selection, Sequential Backward Selection and Sequential Floating Backward Selection. To corroborate the efficacy of the proposed method, an experiment was conducted on our own data set of 25 classes of animals, containing 2500 samples. The data set has different animal species with similar appearance (small inter-class variations) across different classes and varying appearance (large intra-class variations) within a class. In addition, the images of flowers are of different poses, with cluttered background under different lighting and climatic conditions. Experiment results reveal that Symbolic classifier outperforms Nearest Neighbour and Probabilistic Neural Network classifiers.
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