Supervised and unsupervised learning in animal classification

N. Manohar, Y. H. Kumar, G. Kumar
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引用次数: 16

Abstract

In this work, we have developed a supervised and unsupervised based classification system to classify the animals. Initially, the animal images are segmented using maximal region merging segmentation algorithm. The Gabor features are extracted from segmented images. Further, the extracted features are reduced based on supervised and unsupervised methods. In supervised method, we have used Linear Discriminate Analysis (LDA) dimension reduction technique to reduce the features. The reduced features are fed into symbolic classifier for the purpose of classification. In unsupervised method, we have used Principle component analysis (PCA) dimension reduction technique to reduce the features. The reduced features are fed into K-means algorithm for the purpose of grouping. Experimentation has been conducted on a dataset of 2000 animal images consisting of 20 different categories of animals with varying percentages of training samples. From the proposed model, it is observed that supervised classification system performs better compared to unsupervised method.
动物分类中的监督与非监督学习
在这项工作中,我们开发了一个基于监督和非监督的分类系统来对动物进行分类。首先,采用最大区域合并分割算法对动物图像进行分割。从分割后的图像中提取Gabor特征。进一步,基于监督和无监督方法对提取的特征进行约简。在监督方法中,我们使用线性判别分析(LDA)降维技术对特征进行降维。将简化后的特征输入到符号分类器中进行分类。在无监督方法中,我们使用主成分分析(PCA)降维技术对特征进行降维。将简化后的特征输入到K-means算法中进行分组。实验在2000个动物图像数据集上进行,该数据集由20个不同类别的动物组成,具有不同百分比的训练样本。从提出的模型中可以看出,监督分类系统的性能优于无监督分类方法。
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