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Assessment of different classification algorithms for burnt land discrimination

机译:评估不同分类算法的烧伤土地歧视

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In this paper, satellite-based remote sensing techniques are used for assessing the damage after a forest fire. Here, burnt land mapping is based on a single after-fire satellite image (SPOT 5). Both Support Vector Machines (SVM) and traditional classification algorithms such as the K-nearest neighbours or the Kmeans are used to discriminate burnt from unburnt areas. An automatic method combining K-means and SVM is presented and its performances are compared to more classical methods. Maps produced by the different classifiers are also compared to official ground truth provided by the French Space Agency (CNES).
机译:在本文中,基于卫星的遥感技术用于评估森林大火后的破坏。在这里,烧毁的土地制图基于一个单一的火后卫星图像(SPOT 5)。支持向量机(SVM)和传统的分类算法(例如K近邻或Kmeans)都被用来区分未燃烧区域和燃烧区域。提出了一种结合K-means和SVM的自动方法,并将其性能与更经典的方法进行了比较。还将不同分类器生成的地图与法国航天局(CNES)提供的官方地面真相进行比较。

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