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Analysis of RapidEye imagery for agricultural land mapping

机译:农业陆地测绘雄育图像分析

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With the improvement of remote sensing technology, the spatial, structural and texture information of land covers are present clearly in high resolution imagery, which enhances the ability of crop mapping. Since the satellite RapidEye was launched in 2009, high resolution multispectral imagery together with wide red edge band has been utilized in vegetation monitoring. Broad red edge band related vegetation indices improved land use classification and vegetation studies. RapidEye high resolution imagery was used in this study to evaluate the potential of red edge band in agricultural land cover/use mapping using an objected-oriented classification approach. A new object-oriented decision tree classifier was introduced in this study to map agricultural lands in the study area. Besides the five bands of RapidEye image, the vegetation indexes derived from spectral bands and the structural and texture features are utilized as inputs for agricultural land cover/use mapping in the study. The optimization of input features for classification by reducing redundant information improves the mapping precision about 18% for AdaTree. WL decision tree, and 5% for SVM, the accuracy is over 90% for both classifiers.
机译:随着遥感技术的提高,陆地覆盖物的空间,结构和质地信息清楚地存在于高分辨率图像中,这提高了作物映射的能力。由于2009年推出了卫星Rapideye,因此在植被监测中使用了高分辨率的多光谱图像与宽红色边缘频段。广阔的红边乐队相关植被指数改善土地利用分类和植被研究。在本研究中使用了Rapideye高分辨率图像,以评估农业陆地覆盖/使用映射中红色边缘带的潜力,采用面向对象的分类方法。本研究介绍了一种新的面向对象的决策树分类器,以映射研究区域的农业土地。除了Fapideye图像的五个频段之外,源自光谱带和结构和纹理特征的植被指标被用作农业用地覆盖/使用研究中的绘图的输入。通过减少冗余信息进行分类的输入特征的优化可以提高Adatree的映射精度约为18%。 WL决策树和5%的SVM,两个分类器的准确度超过90%。

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