首页> 外文会议>Geoscience and Remote Sensing Symposium, 2004. IGARSS '04. Proceedings. 2004 IEEE International >Class-label statistics: a basis for fusing information from multispectral imagery with an application to unsupervised detection of human settlement
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Class-label statistics: a basis for fusing information from multispectral imagery with an application to unsupervised detection of human settlement

机译:类别标签统计数据:融合多光谱图像信息的基础,并应用于无监督人类住区检测

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A new approach to fusion of information from multispectral (MS) imagery is presented. This approach is motivated by the desire to develop an unsupervised classifier which can robustly detect settled regions (i.e., regions containing man-made structures). It is well known in the remote sensing community that the ground truth used in supervised classification are not only difficult to obtain but tend to be inconsistent and difficult to validate. In this paper, we present an unsupervised approach for the problem which combines a two-step analysis of MS imagery with a spatial analysis of higher resolution panchromatic imagery. The MS analysis first combines the multispectral pixel information to create an image of pixel labels generated by the K-Means clustering algorithm. Tile-based features are then computed based on the first and second order class label statistics. These tile features are then used to classify the tiles via a second application of the K-Means clustering algorithm. The results from this MS analysis define clusters of tiles of variable texture that are highly likely to contain evidence of human settlements. Spatial information is then brought to bear by analyzing coregistered high-resolution panchromatic images. By standard detectors we find the corner and edge densities in each coregistered tile. Determination of the threshold values used to determine the presence or absence of human settlements is currently performed by a human observer. The results of this spatial analysis are then compared and combined with the MS results to finally determine the set of tiles containing signs of human settlements.
机译:提出了一种融合多光谱(MS)图像信息的新方法。这种方法的动机是希望开发一种无监督的分类器,该分类器可以可靠地检测到沉降区域(即包含人造结构的区域)。在遥感界众所周知,在监督分类中使用的地面事实不仅难以获得,而且往往前后矛盾且难以验证。在本文中,我们提出了一种针对该问题的无监督方法,该方法将MS图像的两步分析与高分辨率全色图像的空间分析相结合。 MS分析首先结合多光谱像素信息,以创建由K-Means聚类算法生成的像素标签图像。然后基于一阶和二阶类标签统计信息计算基于图块的特征。然后,将这些图块特征用于通过K-Means聚类算法的第二个应用程序对图块进行分类。该MS分析的结果定义了质地可变的瓷砖簇,这些簇很可能包含人类住区的证据。然后通过分析共同配准的高分辨率全色图像来承载空间信息。通过标准检测器,我们可以找到每个共同配准图块中的边角和边沿密度。当前,由观察者来确定用于确定是否存在人类住区的阈值。然后将这种空间分析的结果进行比较,并与MS结果结合起来,最终确定出包含人类住区迹象的瓷砖集。

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