首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >MAN-MADE OBJECT EXTRACTION FROM REMOTE SENSING IMAGERY BY GRAPH-BASED MANIFOLD RANKING
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MAN-MADE OBJECT EXTRACTION FROM REMOTE SENSING IMAGERY BY GRAPH-BASED MANIFOLD RANKING

机译:基于图形的流形排序从遥感影像中提取人为对象

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The automatic extraction of man-made objects from remote sensing imagery is useful in many applications. This paper proposes an algorithm for extracting man-made objects automatically by integrating a graph model with the manifold ranking algorithm. Initially, we estimate a priori value of the man-made objects with the use of symmetric and contrast features. The graph model is established to represent the spatial relationships among pre-segmented superpixels, which are used as the graph nodes. Multiple characteristics, namely colour, texture and main direction, are used to compute the weights of the adjacent nodes. Manifold ranking effectively explores the relationships among all the nodes in the feature space as well as initial query assignment; thus, it is applied to generate a ranking map, which indicates the scores of the man-made objects. The man-made objects are then segmented on the basis of the ranking map. Two typical segmentation algorithms are compared with the proposed algorithm. Experimental results show that the proposed algorithm can extract man-made objects with high recognition rate and low omission rate.
机译:从遥感影像中自动提取人造物体在许多应用中很有用。提出了一种将图模型与流形排序算法集成在一起的自动提取人造物体的算法。最初,我们使用对称和对比特征来估计人造物体的先验值。建立图形模型以表示用作图形节点的预分割超像素之间的空间关系。多个特征(即颜色,纹理和主方向)用于计算相邻节点的权重。流形排序有效地探索了特征空间中所有节点之间的关系以及初始查询分配;因此,它被用于生成一个等级图,该等级图表示人造物体的分数。然后根据排名图对人造对象进行分割。将两种典型的分割算法与提出的算法进行了比较。实验结果表明,该算法能够提取出识别率高,遗漏率低的人造物体。

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