Contextual Information Classification of Remotely Sensed Images

Alirza Dori, H. Ghassemian, M. Imani
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Abstract

This work proposes a multidisciplinary contextual information extraction and decision fusion approach for increasing the classification accuracy. It improves the image classification with integrating the results of various classifiers. The proposed method is implemented in three-steps: 1) contextual feature extraction using four different feature extractors methods: a) Gray Level Cooccurrence Matrix, b) Gabor filters, c) Laplacian Gaussian filters and d) Gaussian Derivatives Functions; 2) classification of contextual features using four different classification rules (ML, Tree, KNN and SVM) by using only 2% of data for training the classifiers; and 3) finally, decision fusion using six decision fusion rules. The experimental results on real remotely sensed images have been presented.
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遥感图像上下文信息分类
本文提出了一种多学科的上下文信息提取和决策融合方法,以提高分类精度。它综合了各种分类器的分类结果,提高了图像的分类效率。该方法分三步实现:1)使用四种不同的特征提取方法进行上下文特征提取:a)灰度共生矩阵,b) Gabor滤波器,c)拉普拉斯高斯滤波器和d)高斯导数函数;2)使用四种不同的分类规则(ML、Tree、KNN和SVM)对上下文特征进行分类,仅使用2%的数据进行分类器训练;最后,利用6条决策融合规则进行决策融合。给出了在真实遥感图像上的实验结果。
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