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Scale Matters: Spatially Partitioned Unsupervised Segmentation Parameter Optimization for Large and Heterogeneous Satellite Images

机译:规模事项:大型和异构卫星图像的空间分区无监督的分割参数优化

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摘要

To classify Very-High-Resolution (VHR) imagery, Geographic Object Based Image Analysis (GEOBIA) is the most popular method used to produce high quality Land-Use/Land-Cover maps. A crucial step in GEOBIA is the appropriate parametrization of the segmentation algorithm prior to the classification. However, little effort has been made to automatically optimize GEOBIA algorithms in an unsupervised and spatially meaningful manner. So far, most Unsupervised Segmentation Parameter Optimization (USPO) techniques, assume spatial stationarity for the whole study area extent. This can be questionable, particularly for applications in geographically large and heterogeneous urban areas. In this study, we employed a novel framework named Spatially Partitioned Unsupervised Segmentation Parameter Optimization (SPUSPO), which optimizes segmentation parameters locally rather than globally, for the Sub-Saharan African city of Ouagadougou, Burkina Faso, using WorldView-3 imagery (607 km2). The results showed that there exists significant spatial variation in the optimal segmentation parameters suggested by USPO across the whole scene, which follows landscape patterns—mainly of the various built-up and vegetation types. The most appropriate automatic spatial partitioning method from the investigated techniques, was an edge-detection cutline algorithm, which achieved higher classification accuracy than a global optimization, better predicted built-up regions, and did not suffer from edge effects. The overall classification accuracy using SPUSPO was 90.5%, whilst the accuracy from undertaking a traditional USPO approach was 89.5%. The differences between them were statistically significant (p < 0.05) based on a McNemar’s test of similarity. Our methods were validated further by employing a segmentation goodness metric, Area Fit Index (AFI)on building objects across Ouagadougou, which suggested that a global USPO was more over-segmented than our local approach. The mean AFI values for SPUSPO and USPO were 0.28 and 0.36, respectively. Finally, the processing was carried out using the open-source software GRASS GIS, due to its efficiency in raster-based applications.
机译:分类非常高的分辨率(VHR)图像,地理基于对象的图像分析(GEOBIA)是用于生产高品质的土地利用/土地覆盖图最常用的方法。在GEOBIA的一个关键步骤是先于分类分割算法的适当参数化。然而,很少的努力已经取得了自动优化GEOBIA算法在无监督和空间上有意义的方式。到目前为止,大多数无监督分割参数优化(USPO)技术,承担了整个研究区范围内的空间平稳。这可能是有问题的,特别是在地理大和异构市区的应用。在这项研究中,我们采用了名为空间分区无监督分割参数优化(SPUSPO)一种新的框架,优化分割参数本地而不是全局的,对布基纳法索瓦加杜古的撒哈拉以南的非洲城市,使用的WorldView-3的图像(607平方公里)。结果表明,存在着由USPO整个场景建议的最佳分割参数显著空间变化,这是继景观格局,主要是各类建成和植被类型。最合适的自动空间分割从调查技术方法,是一种边缘检测算法切割线,这不是一个全局优化,更好地预测建成区达到更高的分类准确率,并没有从边缘效应的影响。使用SPUSPO整体分类准确率为90.5%,而从承接了传统USPO方法准确率为89.5%。它们之间的区别基于相似性的McNemar检验有统计学显著(P <0.05)。我们的方法是通过构建跨瓦加杜古的对象,这表明,全球USPO更加过度分割比我们本地方法采用分段善良的度量,面积拟合指数(AFI)进一步验证。对于SPUSPO和USPO平均AFI值分别为0.28和0.36。最后,处理进行了使用开源软件GRASS GIS,由于其在基于光栅的应用效率。

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