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Mapping vegetation morphology types in a dry savanna ecosystem: integrating hierarchical object-based image analysis with Random Forest

机译:绘制干旱大草原生态系统中的植被形态类型:将基于对象的分层图像分析与随机森林相结合

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摘要

Savanna ecosystems are geographically extensive and both ecologically and economically important, and require monitoring over large spatial extents. Remote-sensing-based characterization of vegetation properties in savannas is methodologically challenging, mainly due to high structural and functional heterogeneity. Recent advances in object-based image analysis (OBIA) and machine learning algorithms offer new opportunities to address these challenges. Focusing on the semi-arid savanna ecosystem in the central Kalahari, this study examined the suitability of a hierarchical OBIA approach combined with in situ data and an ensemble classification technique for mapping vegetation morphology types at landscape scale. A stack of Landsat TM imagery, NDVI, and topographic variables was segmented with six different scale factors resulting in a hierarchical network of image objects. Sample objects for each vegetation morphology class were selected at each segmentation scale and classification was performed using optimal features consisting of spectral and textural features. Overall and class-specific classification accuracies were compared across the six scales to examine the influence of segmentation scale on each. Results suggest that the highest overall classification accuracy (i.e. 85.59%) was observed not at the finest segmentation scale, but at coarse segmentation. Additionally, individual vegetation morphology classes differed in the segmentation scale at which they achieved highest classification accuracy, reflecting their unique ecology and physiognomic composition. While classes with high vegetation density/height attained higher accuracy at fine segmentation scale, those with lower vegetation density/height reached higher classification accuracy at coarse segmentation scales. Contrarily, for pans and bare areas, accuracy was relatively unaffected by changing segmentation scale. Variable importance plots suggested that spectral features were the most important, followed by textural variables. These results show the utility of the OBIA approach and emphasize the requirement of multi-scale analysis for accurately characterizing savanna systems.
机译:稀树草原生态系统在地理上十分广泛,在生态和经济上都很重要,需要在较大的空间范围内进行监控。基于遥感的热带稀树草原植被特征表征在方法上具有挑战性,这主要归因于高度的结构和功能异质性。基于对象的图像分析(OBIA)和机器学习算法的最新进展提供了应对这些挑战的新机会。着眼于卡拉哈里中部的半干旱热带稀树草原生态系统,本研究研究了分层OBIA方法与原位数据和整体分类技术相结合在景观尺度上绘制植被形态类型的适用性。用六个不同的比例因子对Landsat TM影像,NDVI和地形变量的堆栈进行了分割,从而形成了图像对象的分层网络。在每个分割尺度上选择每种植被形态学类别的样本对象,并使用由光谱和纹理特征组成的最佳特征进行分类。在六个量表上比较了总体和特定类别的分类准确性,以检验细分量表对每个量表的影响。结果表明,不是在最佳分割规模上,而是在粗略分割下,观察到了最高的总体分类准确度(即85.59%)。此外,各个植被形态学类别在分割尺度上各不相同,在该尺度上,它们达到了最高的分类精度,反映了其独特的生态学和相貌组成。植被密度/高度高的分类在精细分割尺度下获得较高的准确性,而植被密度/高度低的那些分类在粗略分割尺度下达到较高的分类精度。相反,对于平底锅和裸露区域,准确度相对不受分割比例变化的影响。重要性变量图表明,光谱特征是最重要的,其次是纹理变量。这些结果表明了OBIA方法的实用性,并强调了多尺度分析对准确表征热带稀树草原系统的要求。

著录项

  • 来源
    《International journal of remote sensing》 |2014年第4期|1175-1198|共24页
  • 作者单位

    Department of Geography & the Environment, The University of Texas, 1 University Station, A3100, Austin, TX 78712, USA;

    Department of Geography & the Environment, The University of Texas, 1 University Station, A3100, Austin, TX 78712, USA;

  • 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
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