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A Multispectral Image Segmentation Approach for Object-based Image Classification of High Resolution Satellite Imagery

机译:高分辨率卫星图像基于对象的图像分类的多光谱图像分割方法

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摘要

Image segmentation has been recognized as an essential process that performs an object-based rather than a pixel-based classification of high-resolution satellite imagery. This paper presents an efficient image segmentation method that considers the spatial and spectral information of high-resolution pan-sharpened imagery. First, we conduct multispectral nonlinear edge preserving smoothing and extract the multispectral edge, which is used as valuable information for seed selection and image segmentation. The initial seeds are automatically selected using the proposed edge variation-based seed selection method, which uses the obtained multispectral edge in a local region. After automatic selection of significant seeds, image segmentation is achieved by applying the modified seeded region growing procedure, which integrates the multispectral and gradient information existing in the image to provide homogenous image regions with accurate and closed boundaries. Experimental results on two multispectral satellite images are given to show that the proposed approach has capability superiority to the previous segmentation techniques on visual evaluation and quantitative comparative assessment.
机译:图像分割已被视为执行高分辨率卫星图像的基于对象而不是基于像素的分类的必要过程。本文提出了一种有效的图像分割方法,该方法考虑了高分辨率全锐化图像的空间和光谱信息。首先,我们进行多光谱非线性边缘保留平滑处理,并提取多光谱边缘,将其用作种子选择和图像分割的有价值的信息。使用建议的基于边缘变化的种子选择方法自动选择初始种子,该方法使用局部区域中获得的多光谱边缘。在自动选择重要的种子之后,通过应用修改的种子区域生长过程来实现图像分割,该过程将图像中存在的多光谱和梯度信息进行集成,以提供具有精确且封闭边界的均匀图像区域。在两个多光谱卫星图像上的实验结果表明,该方法在视觉评估和定量比较评估方面具有优于先前分割技术的能力。

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