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Using maps to automate the classification of remotely sensed imagery

机译:使用地图自动化遥感图像的分类

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Abstract: The accurate classification of remotely sensed imagery usually requires some form of ground truth data. Maps are potentially a valuable source of ground truth but have several problems (e.g., they are usually out-dated, features are generalized, and thematic categories in the map often do not correspond to distinct clusters or segments in the imagery). We describe several methods for using maps to automate the classification of remotely sensed data, specifically landsat thematic mapper imagery. In each, map data are co-registered to all or a part of the image to be classified. A probability model relating spectral clusters derived from the imagery to thematic categories contained in the map is then estimated. This model is computed globally and adjusted locally based on context. By computing the probability model over a large area (e.g., the full landsat scene) general relationships between spectral categories and clusters are captured even though there are differences between the image and the map. Then, by adjusting and applying the model locally, new features can be extracted from the image that are not contained in the map and, in certain cases, different classes can be assigned to the same cluster in different parts of the image based on context. Experimental results are presented for several landsat scenes. Several of the methods produced results that were more accurate than the map. We show that these methods are able to enhance the spatial detail of features contained in the map, identify new features not present in the map, and fill in areas in which map coverage does not exist. !7
机译:摘要:遥感影像的准确分类通常需要某种形式的地面真实数据。地图可能是地面真理的宝贵来源,但存在一些问题(例如,地图通常过时,特征被概括化,并且地图中的主题类别通常不对应于图像中的不同类或部分)。我们描述了几种使用地图来自动化遥感数据分类的方法,特别是对专题地图制作者的图像进行了分类。在每个地图数据中,将地图数据共同注册到要分类的全部或部分图像。然后,估计将图像衍生的光谱簇与地图中包含的主题类别相关联的概率模型。该模型是全局计算的,并根据上下文进行局部调整。通过在大面积(例如,整个陆地卫星场景)上计算概率模型,即使图像和地图之间存在差异,也可以捕获光谱类别和聚类之间的一般关系。然后,通过局部调整和应用模型,可以从图像中提取地图中未包含的新特征,并且在某些情况下,可以根据上下文将不同的类别分配给图像中不同部分的同一聚类。实验结果提供了几个陆地卫星的场景。几种方法产生的结果比地图更准确。我们证明了这些方法能够增强地图中包含的特征的空间细节,识别地图中不存在的新特征,并填充不存在地图覆盖率的区域。 !7

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