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High-resolution multispectral image classification over urban areas by image segmentation and extended morphological profile

机译:通过图像分割和延长形态学概况对城市地区高分辨率多光谱图像分类

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In this study, classification of multispectral data with high resolution from urban areas by combining image segmentation and morphological characteristics is investigated. Traditional watershed segmentation defined for gray level image was extended to multispectral image segmentation by computing multispectral gradient image through a vector based approach, which uses extended dilation and erosion operations. The extended morphological profile was used to extract multiscale structural information from multispectral image, which was then used in image classification. An extended morphological profile is constructed based on the repeated use of geodesic openings and closings with a structuring element of increasing size, starting with the original multispectral image. Since the profile includes a range of increasing opening and closing by reconstruction operation, the resulting profile can be high-dimensional. The Support Vector Machines (SVM) were selected as classifier in this study. The per-pixel classification by SVM using both spectral data and structural information derived from extended morphological profiles was first conducted. The obtained per-pixel classification results were then combined with image segmentation results by an overlay operation for object based image classification. The proposed method was evaluated using QuickBird multispectral images over urban areas. The results show that the proposed classification method significantly improves the image classification results, compared to per-pixel spectral classification.
机译:在本研究中,研究了通过组合图像分割和形态特征来分类来自城市地区的高分辨率的多光谱数据。通过通过基于向量的方法计算多光谱梯度图像来扩展为灰度级图像定义的传统流域分割,其使用扩展扩张和侵蚀操作来计算多光谱梯度图像。延长的形态分布用于从多光谱图像中提取多尺度结构信息,然后在图像分类中使用。基于重复使用测地开口和闭合的延长的尺寸的构造元件构造了延长的形态轮廓,从原始多光谱图像开始。由于轮廓包括通过重建操作增加的增加开口和关闭,因此得到的轮廓可以是高维的。在本研究中选择支持向量机(SVM)作为分类器。首先进行使用SVM的每像素分类和源自延长的形态轮廓的结构信息。然后通过基于对象的图像分类的覆盖操作将获得的每个像素分类结果与图像分割结果组合。使用Quickbird MultiSpectral图像在城市地区进行评估该方法。结果表明,与每像素光谱分类相比,所提出的分类方法显着提高了图像分类结果。

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