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Optimal region growing segmentation and its effect on classification accuracy

机译:最优区域增长分割及其对分类精度的影响

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摘要

Image segmentation is a preliminary and critical step in object-based image classification. Its proper evaluation ensures that the best segmentation is used in image classification. In this article, image segmentations with nine different parameter settings were carried out with a multi-spectral Landsat imagery and the segmentation results were evaluated with an objective function that aims at maximizing homogeneity within segments and separability between neighbouring segments. The segmented images were classified into eight land-cover classes and the classifications were evaluated with independent ground data comprising 600 randomly distributed points. The accuracy assessment results presented similar distribution as that of the objective function values, that is segmentations with the highest objective function values also resulted in the highest classification accuracies. This result shows that image segmentation has a direct effect on the classification accuracy; the objective function not only worked on a single band image as proved by Espindola et al. (2006, Parameter selection for region-growing image segmentation algorithms using spatial autocorrelation. International Journal of Remote Sensing, 27, pp. 3035-3040) but also on multi-spectral imagery as tested in this, and is indeed an effective way to determine the optimal segmentation parameters. McNemar's test (z2 = 10.27) shows that with the optimal segmentation, object-based classification achieved accuracy significantly higher than that of the pixel-based classification, with 99% significance level.
机译:图像分割是基于对象的图像分类中的第一步,也是至关重要的一步。它的正确评估可确保在图像分类中使用最佳分割。在本文中,使用多光谱Landsat影像对具有9个不同参数设置的图像进行了分割,并使用目标函数评估了分割结果,该目标函数的目的是最大程度地提高片段内的均匀性和相邻片段之间的可分离性。分割后的图像被分为八个土地覆盖类别,并使用包含600个随机分布点的独立地面数据对分类进行了评估。准确性评估结果呈现出与目标函数值相似的分布,也就是说,具有最高目标函数值的细分也导致了最高分类精度。结果表明,图像分割对分类精度有直接影响。正如Espindola等人所证明的,目标函数不仅作用于单波段图像。 (2006年,使用空间自相关的区域增长图像分割算法的参数选择。国际遥感杂志,第27页,第3035-3040页),以及在此测试的多光谱图像上,这确实是一种有效的确定方法最佳分割参数。 McNemar的检验(z2 = 10.27)表明,通过最佳分割,基于对象的分类实现的准确性显着高于基于像素的分类,其显着性水平为99%。

著录项

  • 来源
    《International journal of remote sensing》 |2011年第14期|p.3747-3763|共17页
  • 作者单位

    Centro de Investigaciones en Geografia Ambiental-Universidad Nacional Autonoma de Mexico (UNAM), Morelia, Michoacan, Mexico;

    Centro de Investigaciones en Geografia Ambiental-Universidad Nacional Autonoma de Mexico (UNAM), Morelia, Michoacan, Mexico;

    International Institute for Geoinformation Science and Earth Observation (ITC),PO Box 6, 7500 AA Enschede, The Netherlands;

    Centro de Investigaciones en Geografia Ambiental-Universidad Nacional Autonoma de Mexico (UNAM), Morelia, Michoacan, Mexico;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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