高光谱图像处理中基于减带的SVM分类方法

Orhan Yaman, Hasan Yetiş, M. Karakose
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引用次数: 6

摘要

本文提出了一种基于图像处理和机器学习的高光谱图像分类方法。该方法在印第安松和肯尼迪航天中心的数据集上进行了测试。作为预处理步骤,对高光谱数据集的所有波段进行归一化、中值滤波和均值滤波。预处理后,对数据集中的5、25和125波段进行平均,得到新的波段。将得到的波段进行组合并提取特征。将多波段数据集转换为单波段特征矩阵。通过向特征矩阵中添加类标签来进行分类。在MATLAB分类学习工具箱中使用支持向量机线性、二次和三次方法进行分类。对于这两个数据集,SVM分类算法的准确率均达到99%。
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Band Reducing Based SVM Classification Method in Hyperspectral Image Processing
In this study, a method based on image processing and machine learning is proposed for classification in hyperspectral images. The proposed method is tested on Indian Pines and KSC (Kennedy Space Center) datasets. As a preprocessing step, normalization, median filter and mean filter were applied to all bands in the hyperspectral data set. After the pre-processing, new bands are obtained by averaging the 5, 25 and 125 bands in the dataset. The obtained bands are combined and features extracted. The multi-band dataset is transformed into a single-band feature matrix. Classification is made by adding class labels to the feature matrix. SVM (Support Vector Machines) Linear, SVM Quadratic and SVM Cubic methods are used for classification using MATLAB Classification Learner Toolbox. For all the two data sets, 99% accuracy was obtained with the SVM classification algorithm.
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