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Segmentation of high-resolution multispectral image based on extended morphological profiles

机译:基于扩展形态学轮廓的高分辨率多光谱图像分割

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摘要

High-resolution multispectral remote sensing image provides both spectral and structural information about land cover/land use types. In segmentation of such complex image scenes with obvious texture, the efficient image segmentation is required. In this study, a method for high resolution image segmentation based on the extended morphological profiles is proposed. First, fundamental morphological vector operations (erosion and dilation) are defined by the extension, taking into account the spatial and spectral information in simultaneous fashion. Theoretical definitions of extended morphological operations are used in the formal definition of the concept of extended morphological profiles, which is constructed based on the repeated use of openings and closings by reconstruction with a structuring element (SE) of increasing size. Then, the morphological multiscale characteristic (MMC) of each pixel is gained through the derivative of the extended morphological profiles (DEMP). A modified method was proposed to obtain the right morphological characteristics of the pixel, which will be used for the final segmentation results. Finally, a simple region merging method based on the distance between two centroids of the neighboring regions was adopted to further improve the segmentation result. The proposed approach is applied to highresolution QuickBird multispectral images from urban, agricultural and forest areas for evaluation and comparison with existing methods, in terms of qualitative visual inspection and quantitative criteria. The proposed method demonstrated better performance than the classical morphological segmentation approaches.
机译:高分辨率多光谱遥感图像提供有关土地覆盖/土地利用类型的光谱和结构信息。在具有明显纹理的这种复杂图像场景的分割中,需要有效的图像分割。在这项研究中,提出了一种基于扩展形态学轮廓的高分辨率图像分割方法。首先,通过扩展定义基本形态矢量操作(侵蚀和膨胀),同时考虑空间和光谱信息。扩展形态学操作的理论定义用于扩展形态学概貌概念的正式定义,该概念是基于通过使用尺寸越来越大的结构元素(SE)进行重建而反复使用开闭来构造的。然后,通过扩展形态学轮廓(DEMP)的导数获得每个像素的形态学多尺度特征(MMC)。提出了一种改进的方法来获得正确的像素形态特征,并将其用于最终的分割结果。最后,基于相邻区域的两个质心之间的距离,采用了一种简单的区域合并方法,以进一步提高分割效果。所提出的方法适用于来自城市,农业和森林地区的高分辨率QuickBird多光谱图像,以进行定性视觉检查和定量标准方面的评估和与现有方法的比较。与经典的形态学分割方法相比,该方法具有更好的性能。

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