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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >GA-SVM Algorithm for Improving Land-Cover Classification Using SAR and Optical Remote Sensing Data
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GA-SVM Algorithm for Improving Land-Cover Classification Using SAR and Optical Remote Sensing Data

机译:利用SAR和光学遥感数据改进土地覆盖分类的GA-SVM算法

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摘要

Multisource remote sensing data have been widely used to improve land-cover classifications. The combination of synthetic aperture radar (SAR) and optical imagery can detect different land-cover types, and the use of genetic algorithms (GAs) and support vector machines (SVMs) can lead to improved classifications. Moreover, SVM kernel parameters and feature selection affect the classification accuracy. Thus, a GA was implemented for feature selection and parameter optimization. In this letter, a GA-SVM algorithm was proposed as a method of classifying multifrequency RADARSAT-2 (RS2) SAR images and Thaichote (THEOS) multispectral images. The results of the GA-SVM algorithm were compared with those of the grid search algorithm, a traditional method of parameter searching. The results showed that the GA-SVM algorithm outperformed the grid search approach and provided higher classification accuracy using fewer input features. The images obtained by fusing RS2 data and THEOS data provided high classification accuracy at over 95%. The results showed improved classification accuracy and demonstrated the advantages of using the GA-SVM algorithm, which provided the best accuracy using fewer features.
机译:多源遥感数据已被广泛用于改善土地覆被分类。合成孔径雷达(SAR)和光学图像的组合可以检测到不同的土地覆盖类型,并且使用遗传算法(GA)和支持向量机(SVM)可以改善分类。而且,SVM内核参数和特征选择会影响分类准确性。因此,GA用于实现特征选择和参数优化。在这封信中,提出了一种GA-SVM算法作为对多频RADARSAT-2(RS2)SAR图像和Thaichote(THEOS)多光谱图像进行分类的方法。将GA-SVM算法的结果与传统的参数搜索方法网格搜索算法的结果进行了比较。结果表明,GA-SVM算法优于网格搜索方法,并使用较少的输入特征提供了更高的分类精度。通过融合RS2数据和THEOS数据获得的图像提供了超过95%的高分类精度。结果显示出提高的分类精度,并展示了使用GA-SVM算法的优势,该算法使用较少的功能即可提供最佳的精度。

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