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首页> 外文期刊>European Journal of Remote Sensing >Land cover classification in Romanian Carpathians and Subcarpathians using multi-date Sentinel-2 remote sensing imagery
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Land cover classification in Romanian Carpathians and Subcarpathians using multi-date Sentinel-2 remote sensing imagery

机译:使用多日期Sentinel-2遥感图像对罗马尼亚喀尔巴阡和亚喀尔巴阡山脉的土地覆盖进行分类

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ABSTRACT In this article, we processed Sentinel-2 images in order to obtain high accuracy land cover maps for two complementary study areas. The first is represented by the Romanian Subcarpathians, a hilly highly fragmented area with heterogeneous land cover pattern and the second by Romanian Carpathians, a mountain area with homogenous structure of vegetation cover. The aim of this article is to evaluate the potential of a singledate in comparison with multi-date images for which a complete calibration and an iterative process of supervised classification using Maximum Likelihood (ML) and Support Vector Machine (SVM) algorithms were applied for the both study areas. The results show that in the case of Subcarpathian area, the SVM classification on multi-date images has better accuracy due to high complexity of the land cover pattern and spectral similarities between classes, while in the Carpathians, the ML????returns good accuracy, consequence of high spectral separabilities between compact features. The validation process based on ground reference data shows good accuracies, about 92.41% for the Subcarpathians and 98.65% for the Carpathians. It is clearly noticed that the land cover pattern determines the use of different algorithms and the multi-date images enhance the overall accuracy of the classification.
机译:摘要在本文中,我们处理了Sentinel-2图像,以获得两个互补研究区域的高精度土地覆盖图。第一个以罗马尼亚次喀尔巴阡山脉为代表,这是一个高度破碎的丘陵地带,具有不均匀的土地覆盖模式;第二个以罗马尼亚罗马尼亚喀尔巴阡山脉为代表,该山区具有植被覆盖的同质结构。本文的目的是评估与多日期图像相比单日期的潜力,对于多日期图像,使用最大似然(ML)和支持向量机(SVM)算法对图像进行完整校准和监督分类的迭代过程,两个研究领域。结果表明,在亚喀尔巴阡地区,由于土地覆盖模式的复杂性和类别之间的光谱相似性,在多日期图像上的SVM分类具有更好的准确性,而在喀尔巴阡地区,ML?精度,是紧凑特征之间高光谱可分离性的结果。基于地面参考数据的验证过程显示出良好的准确性,亚喀尔巴阡山脉约为92.41%,喀尔巴阡山脉约为98.65%。清楚地注意到,土地覆盖模式决定了使用不同的算法,并且多日期图像增强了分类的整体准确性。

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