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A multi-band approach to unsupervised scale parameter selection for multi-scale image segmentation

机译:用于多尺度图像分割的无监督尺度参数选择的多频带方法

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摘要

Image segmentation is one of key steps in object based image analysis of very high resolution images. Selecting the appropriate scale parameter becomes a particularly important task in image segmentation. In this study, an unsupervised multi-band approach is proposed for scale parameter selection in the multi-scale image segmentation process, which uses spectral angle to measure the spectral homogeneity of segments. With the increasing scale parameter, spectral homogeneity of segments decreases until they match the objects in the real world. The index of spectral homogeneity is thus used to determine multiple appropriate scale parameters. The performance of the proposed method is compared to a single-band based method through qualitative visual interpretation and quantitative discrepancy measures. Both methods are applied for segmenting two images: a QuickBird scene of an urban area within Beijing, China and a Woldview-2 scene of a suburban area in Kashiwa, Japan. The proposed multi-band based segmentation scale parameter selection method outperforms the single-band based method with the better recognition for diverse land cover objects in different urban landscapes.
机译:图像分割是超高分辨率图像的基于对象的图像分析中的关键步骤之一。选择合适的比例参数成为图像分割中特别重要的任务。在这项研究中,提出了一种无监督的多频带方法,用于在多尺度图像分割过程中选择尺度参数,该方法使用光谱角度来测量片段的光谱均匀性。随着比例尺参数的增加,线段的光谱均匀性会降低,直到它们与现实世界中的对象匹配为止。因此,光谱均匀性指数用于确定多个适当的比例参数。通过定性的视觉解释和定量的差异测量,将该方法的性能与基于单波段的方法进行了比较。两种方法都适用于分割两个图像:中国北京市区的QuickBird场景和日本柏市郊区的Woldview-2场景。提出的基于多波段的分割尺度参数选择方法优于基于单波段的方法,对不同城市景观中的各种土地覆盖物具有更好的识别能力。

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