基于统计区域合并和最小异质性规则的高分辨率遥感图像多尺度分割

H.T. Li, H. Gu, Y.S. Han, J.H. Yang
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引用次数: 34

摘要

多尺度分割是实现高水平遥感图像处理的重要步骤。针对高分辨率QuickBird图像,提出了一种基于统计区域合并(SRM)的初始分割和基于最小异质性规则(MHR)的多尺度分割方法。它综合了SRM和MHR的优点。SRM分割方法不仅考虑了光谱、形状、尺度等信息,而且具有处理明显噪声损坏、处理遮挡的能力。用于合并目标的MHR利用了目标的光谱信息、形状信息、尺度信息以及局部和全局信息。与采用分形网络进化方法(FNEA)识别和SRM方法进行比较,结果表明该方法克服了它们的缺点,是一种有效的HR图像多尺度分割方法。
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An efficient multi-scale segmentation for high-resolution remote sensing imagery based on Statistical Region Merging and Minimum Heterogeneity Rule
Multi-scale segmentation is an essential step toward higher level image processing in remote sensing. This paper presents a new multi-scale segmentation method based on statistical region merging (SRM) for initial segmentation and minimum heterogeneity rule (MHR) for merging objects where high resolution (HR) QuickBird imageries are used. It synthesized the advantages of SRM and MHR. The SRM segmentation method not only considers spectral, shape, scale information, but also has the ability to cope with significant noise corruption, handle occlusions. The MHR used for merging objects takes advantages of its spectral, shape, scale information, and the local, global information. Compared with Fractal Net Evolution Approach (FNEA) eCognition adopted and SRM methods, the results showed that the proposed method overcame the disadvantages of them and was an effective multi-scale segmentation method for HR imagery.
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