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A method for multi-spectral image segmentation evaluation based on synthetic images

机译:一种基于合成图像的多光谱图像分割评价方法

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摘要

A general framework for testing the quality of the segmentation of a multi-spectral satellite image is proposed. The method is based on the production of synthetic images with the spectral characteristics of the image pixels extracted from a signature multi-spectral image. The knowledge of the location of objects in the synthetic image provides a reference segmentation, which allows for a quantitative evaluation of the quality provided by a segmentation algorithm. The Hammoude metric and three external similarity indices (Rand, Corrected Rand, and Jaccard) were chosen to perform this evaluation, but other metrics can also be used. The proposed methodology can be used for any type of satellite image (or multi-spectral image), set of land cover types, and segmentation algorithms.rnA practical application was carried out to illustrate the value of the proposed method. A SPOT satellite image was used to extract the spectral signature of 8 land cover types. Three test images were produced using the 8 land cover classes and two different 5 class sub-sets. The segmentation results provided by a standard algorithm were compared with the reference or expected segmentation. The results clearly indicate that the quality of a segmentation obtained from a multi-spectral image not only depends on the geometric properties of the objects present in the image, but also on their spectral characteristics. The results suggest that a specific evaluation should be carried out for each particular experiment, as the segmentation results are very dependent on the choice of land cover types.
机译:提出了一种测试多光谱卫星图像分割质量的通用框架。该方法基于产生具有从签名多光谱图像中提取的图像像素的光谱特性的合成图像。合成图像中对象位置的知识提供了参考分割,可以对分割算法提供的质量进行定量评估。选择Hammoude度量标准和三个外部相似性指标(Rand,Corrected Rand和Jaccard)来执行此评估,但是也可以使用其他度量标准。该方法可用于任何类型的卫星图像(或多光谱图像),土地覆盖类型集和分割算法。进行了实际应用,以说明该方法的价值。 SPOT卫星图像用于提取8种土地覆盖类型的光谱特征。使用8个土地覆盖类别和两个不同的5类子集生成了三个测试图像。将标准算法提供的分割结果与参考或预期分割进行比较。结果清楚地表明,从多光谱图像获得的分割质量不仅取决于图像中存在的对象的几何特性,还取决于它们的光谱特性。结果表明,应针对每个特定实验进行特定评估,因为分割结果非常取决于土地覆盖类型的选择。

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