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首页> 外文期刊>ISPRS International Journal of Geo-Information >Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery
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Image Segmentation Parameter Optimization Considering Within- and Between-Segment Heterogeneity at Multiple Scale Levels: Test Case for Mapping Residential Areas Using Landsat Imagery

机译:考虑多尺度水平段内和段间异质性的图像分割参数优化:使用Landsat影像绘制居住区的测试案例

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Multi-scale/multi-level geographic object-based image analysis (MS-GEOBIA) methods are becoming widely-used in remote sensing because single-scale/single-level (SS-GEOBIA) methods are often unable to obtain an accurate segmentation and classification of all land use/land cover (LULC) types in an image. However, there have been few comparisons between SS-GEOBIA and MS-GEOBIA approaches for the purpose of mapping a specific LULC type, so it is not well understood which is more appropriate for this task. In addition, there are few methods for automating the selection of segmentation parameters for MS-GEOBIA, while manual selection (i.e., trial-and-error approach) of parameters can be quite challenging and time-consuming. In this study, we examined SS-GEOBIA and MS-GEOBIA approaches for extracting residential areas in Landsat 8 imagery, and compared naïve and parameter-optimized segmentation approaches to assess whether unsupervised segmentation parameter optimization (USPO) could improve the extraction of residential areas. Our main findings were: (i) the MS-GEOBIA approaches achieved higher classification accuracies than the SS-GEOBIA approach, and (ii) USPO resulted in more accurate MS-GEOBIA classification results while reducing the number of segmentation levels and classification variables considerably.
机译:多尺度/多层次的基于地理对象的图像分析(MS-GEOBIA)方法正在遥感中得到广泛使用,因为单尺度/单层次的(SS-GEOBIA)方法通常无法获得准确的分割和图片中所有土地利用/土地覆被(LULC)类型的分类。但是,出于映射特定的LULC类型的目的,SS-GEOBIA方法和MS-GEOBIA方法之间几乎没有比较,因此尚不十分了解哪种方法更适合此任务。另外,很少有用于自动选择MS-GEOBIA的分割参数的方法,而手动选择参数(即,反复试验方法)可能是相当具有挑战性和耗时的。在这项研究中,我们研究了SS-GEOBIA和MS-GEOBIA方法在Landsat 8影像中提取居住区的情况,并比较了单纯和参数优化的分割方法来评估无监督分割参数优化(USPO)是否可以改善居住区的提取。我们的主要发现是:(i)MS-GEOBIA方法比SS-GEOBIA方法具有更高的分类准确性,并且(ii)USPO产生了更准确的MS-GEOBIA分类结果,同时显着减少了细分级别和分类变量的数量。

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