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Object- and pixel-based analysis for mapping crops and their agro-environmental associated measures using QuickBird imagery

机译:基于对象和像素的分析,使用QuickBird影像绘制农作物及其与农业环境相关的措施

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摘要

Currently, monitoring of agrarian policy actions usually requires ground visits to sample targeted farms, a time-consuming and very expensive procedure. To improve this, we have undertaken a study of the accuracy of five supervised classification methods (Parallelepiped, Minimum Distance, Mahalanobis Classifier Distance, Spectral Angle Mapper and Maximum Likelihood) using multispectral and pan-sharpened QuickBird imagery. We sought to verify whether remote sensing offers the ability to efficiently identify crops and agro-environmental measures in a typical agricultural Mediterranean area characterized by dry conditions. A segmentation of the satellite data was also used to evaluate pixel, object and pixel+object as minimum information units for classification. The results indicated that object- and pixel+object-based analyses clearly outperformed pixel-based analyses, yielding overall accuracies higher than 85% in most of the classifications and exhibiting the Maximum Likelihood of being the most accurate classifier. The accuracy for pan-sharpened image and object-based analysis indicated a 4% improvement in performance relative to multispectral data.
机译:当前,对农业政策行动的监控通常需要对目标农场进行实地考察,这既耗时又非常昂贵。为了改善这一点,我们使用多光谱和全锐化QuickBird影像对五种监督分类方法(平行六面体,最小距离,马氏距离分类器距离,光谱角映射器和最大似然度)的准确性进行了研究。我们试图验证在具有干旱条件的典型地中海农业地区中,遥感技术是否具有有效识别农作物和农业环境措施的能力。卫星数据的分割还用于评估像素,对象和像素+对象,作为用于分类的最小信息单位。结果表明,基于对象和基于像素+对象的分析明显胜过基于像素的分析,在大多数分类中,总体准确性均高于85%,并且显示出作为最准确分类器的最大可能性。全景图像和基于对象的分析的准确性表明,与多光谱数据相比,性能提高了4%。

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