Morphological pre-processing for classification of hyperspectral data from urban areas

J. Benediktsson, J. Palmason, J. R. Sveinsson
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引用次数: 5

Abstract

Classification of hyperspectral data with high spatial resolution is discussed. A method based on mathematical morphology for pre-processing of the hyperspectral data is investigated. In this approach, opening and closing morphological transforms are used in order to isolate bright (opening) and dark (closing) structures in images, where bright/dark means brighter/darker than the surrounding features in the images. Then, a morphological profile is constructed based on the repeated use of openings and closings with a differently sized structuring element. In order to apply the morphological approach to hyperspectral data, principal components are computed. Then, the principal components are used as base images for the morphological profiles. The use of extended morphological profiles, based on more than one principal component is proposed. In experiments, two data sets are classified. The proposed method performs well in terms of classification accuracies. It gives similar overall accuracies to statistical approaches.
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城市高光谱数据分类的形态学预处理
讨论了高空间分辨率高光谱数据的分类问题。研究了一种基于数学形态学的高光谱数据预处理方法。在这种方法中,使用打开和关闭形态学变换来隔离图像中的亮(打开)和暗(关闭)结构,其中亮/暗意味着比图像中的周围特征更亮/更暗。然后,基于重复使用不同大小的结构元素的开口和关闭来构建形态轮廓。为了将形态学方法应用于高光谱数据,计算了主成分。然后,将主成分作为形态轮廓的基图。提出了基于多个主成分的扩展形态轮廓的使用。在实验中,对两个数据集进行分类。该方法具有较好的分类精度。它提供了与统计方法相似的总体准确性。
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