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COMPARISON STUDY OF DIFFERENT MARKER SELECTION METHODS FOR SPECTRAL-SPATIAL CLASSIFICATION OF HYPERSPECTRAL IMAGES

机译:不同标记选择方法对高光谱图像光谱空间分类的比较研究

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An effective approach based on the Minimum Spanning Forest (MSF), grown from automatically selected markers using Support Vector Machines (SVM), has been proposed for spectral-spatial classification of hyperspectral images by Tarabalka et al. This paper aims at improving this approach by using image segmentation to integrate the spatial information into marker selection process. In this study, the markers are extracted from the classification maps, obtained by both SVM and segmentation algorithms, and then are used to build the MSF. The segmentation algorithms are the watershed, expectation maximization (EM) and hierarchical clustering. These algorithms are used in parallel and independently to segment the image. Moreover, the pixels of each class, with the largest population in the classification map, are kept for each region of the segmentation map. Lastly, the most reliable classified pixels are chosen from among the exiting pixels as markers. Two benchmark urban hyperspectral datasets are used for evaluation: Washington DC Mall and Berlin. The results of our experiments indicate that, compared to the original MSF approach, the marker selection using segmentation algorithms leads in more accurate classification maps.
机译:已经提出了使用支持向量机(SVM)从自动选择的标记生长的基于最小跨越森林(MSF)的有效方法,以进行Tarabalka等人的光谱空间分类。本文旨在通过使用图像分割来将空间信息集成到标记选择过程中来改善这种方法。在本研究中,通过SVM和分段算法获得的分类图中提取标记,然后用于构建MSF。分割算法是分水岭,期望最大化(EM)和分层聚类。这些算法并行使用,独立地用于段分割图像。此外,每个类的像素,具有分类图中的最大群体,用于分割图的每个区域。最后,从退出像素中选择最可靠的分类像素作为标记。两个基准城市高光谱数据集用于评估:华盛顿特区商城和柏林。我们的实验结果表明,与原始的MSF方法相比,使用分段算法的标记选择在更准确的分类地图中。

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