Integration of association-rule and decision tree for high resolution image classification

Ziyong Zhou, Yang Zhang
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引用次数: 7

Abstract

Association rule is one of the most important rules in nature. Each type of object in a remotely sensed image relates to special association rules, thus association rules are important features for image classification, and the mining and rational selection of the effective rules is the key issues for accurate classification. In this paper, an approach that integrates association rules analysis and decision tree is presented and applied to object-oriented high resolution image classification. The association rules analysis is adopted for mining strong rules from an image, and the decision tree is for finding the optimal rules for classification. A Geoeye-1 image is used for experimental data. Firstly, the Geoeye-1 image is segmented, then spatial, spectral, textural, color space and band ration features are selected. The association rules in a training set are mined, and a decision tree is designed with consideration of confidence, support of mined rules, as well spectral complexity and the generation sequence of rules. The visual comparison with the results of K-nearest neighbors and accuracy estimation validate the effect of the proposed approach.
基于关联规则和决策树的高分辨率图像分类
关联规则是自然界中最重要的规则之一。遥感图像中的每一类目标都与特定的关联规则相关,因此关联规则是图像分类的重要特征,有效规则的挖掘和合理选择是实现准确分类的关键问题。本文提出了一种将关联规则分析与决策树相结合的方法,并将其应用于面向对象的高分辨率图像分类中。采用关联规则分析从图像中挖掘强规则,采用决策树寻找最优规则进行分类。实验数据采用Geoeye-1图像。首先对Geoeye-1图像进行分割,选取空间特征、光谱特征、纹理特征、色彩空间特征和频带比特征;对训练集中的关联规则进行挖掘,考虑置信度、挖掘规则的支持度、谱复杂度和规则的生成顺序,设计决策树。与k近邻和精度估计结果的视觉比较验证了所提方法的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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