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首页> 外文期刊>ISPRS International Journal of Geo-Information >Intercropping Classification From GF-1 and GF-2 Satellite Imagery Using a Rotation Forest Based on an SVM
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Intercropping Classification From GF-1 and GF-2 Satellite Imagery Using a Rotation Forest Based on an SVM

机译:基于支持向量机的旋转森林对GF-1和GF-2卫星图像的间作分类

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Remote sensing has been widely used in vegetation cover research but is rarely used for intercropping area monitoring. To investigate the efficiency of Chinese Gaofen satellite imagery, in this study the GF-1 and GF-2 of Moyu County south of the Tarim Basin were studied. Based on Chinese GF-1 and GF-2 satellite imagery features, this study has developed a comprehensive feature extraction and intercropping classification scheme. Textural features derived from a Gray level co-occurrence matrix (GLCM) and vegetation features derived from multi-temporal GF-1 and GF-2 satellites were introduced and combined into three different groups. The rotation forest method was then adopted based on a Support Vector Machine (RoF-SVM), which offers the advantage of using an SVM algorithm and that boosts the diversity of individual base classifiers by a rotation forest. The combined spectral-textural-multitemporal features achieved the best classification result. The results were compared with those of the maximum likelihood classifier, support vector machine and random forest method. It is shown that the RoF-SVM algorithm for the combined spectral-textural-multitemporal features can effectively classify an intercropping area (overall accuracy of 86.87% and kappa coefficient of 0.78), and the classification result effectively eliminated salt and pepper noise. Furthermore, the GF-1 and GF-2 satellite images combined with spectral, textural, and multi-temporal features can provide sufficient information on vegetation cover located in an extremely complex and diverse intercropping area.
机译:遥感已广泛用于植被覆盖研究,但很少用于间作间的监测。为了研究中国高分卫星影像的效率,本研究对塔里木盆地南部墨玉县的GF-1和GF-2进行了研究。基于中国GF-1和GF-2卫星图像特征,本研究开发了一种综合的特征提取和间作分类方案。引入了来自灰度共生矩阵(GLCM)的纹理特征和源自多时相GF-1和GF-2卫星的植被特征,并将其组合为三个不同的组。然后,基于支持向量机(RoF-SVM)采用了旋转森林方法,该方法提供了使用SVM算法的优势,并通过旋转森林提高了各个基本分类器的多样性。光谱-纹理-多时相特征组合获得了最佳分类结果。将结果与最大似然分类器,支持向量机和随机森林法的结果进行比较。结果表明,结合光谱-纹理-多时相特征的RoF-SVM算法可以有效地对间作区域进行分类(总精度为86.87%,kappa系数为0.78),分类结果有效消除了椒盐噪声。此外,将GF-1和GF-2卫星图像与光谱,纹理和多时相特征相结合,可以提供有关极其复杂和多样的间作区域内植被覆盖的足够信息。

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