首页> 外文会议>2015 International Conference on Communication, Information amp; Computing Technology >Novel data mining based image classification with Bayes, Tree, Rule, Lazy and Function Classifiers using fractional row mean of Cosine, Sine and Walsh column transformed images
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Novel data mining based image classification with Bayes, Tree, Rule, Lazy and Function Classifiers using fractional row mean of Cosine, Sine and Walsh column transformed images

机译:使用余弦,正弦和沃尔什列变换图像的分数行均值,使用贝叶斯,树,规则,惰性和函数分类器进行基于数据挖掘的新型图像分类

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摘要

Important task in image database is to organize images into appropriate category using different features of images. Image classification is studied for many years. There are various techniques proposed to increase the accuracy of classification. In this paper a novel data mining based approach is proposed for content based image classification. Feature extraction and classification algorithms are two main steps in classification process. This paper proposes the use of orthogonal transform to generate the feature vector and to investigate effectiveness of different transforms (Cosine, Sine, and Walsh). Experimentation is carried on different sizes of feature vectors which are formed by taking fractional coefficients. Classification algorithm from different families such as Bayes (Naive Bayes and Bayes Net), Function (RBFNetwork and Simple Logistic), Lazy (IB1 and Kstar), Rule (Decision and Part) and Tree (BFTree, J48 Random Tree and Random Forest) are used for classification. Experimental results and its analysis have shown the Simple Logistic classifier with Walsh transform to be better for proposed data mining based image classification technique.
机译:图像数据库中的重要任务是使用图像的不同功能将图像组织到适当的类别中。图像分类研究了很多年。为了提高分类的准确性,提出了各种技术。本文提出了一种新的基于数据挖掘的方法,用于基于内容的图像分类。特征提取和分类算法是分类过程中的两个主要步骤。本文提出使用正交变换来生成特征向量并研究不同变换(余弦,正弦和沃尔什)的有效性。对采用分数系数形成的不同大小的特征向量进行了实验。来自不同家族的分类算法,例如贝叶斯(朴素贝叶斯和贝叶斯网络),函数(RBFNetwork和简单逻辑),懒惰(IB1和Kstar),规则(决策和部分)和树(BFTree,J48随机树和随机森林),分别是用于分类。实验结果及其分析表明,采用沃尔什(Walsh)变换的简单逻辑分类器更适合于基于数据挖掘的图像分类技术。

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