首页> 外文会议>ACRS 2011;Asian conference on remote sensing >A MULTI-SCALE, OBJECT-BASED IMAGE ANALYSIS APPROACH IN ASSESSING BIODIVERSITY FOR NEPAL AND NEW ZEALAND SITES.
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A MULTI-SCALE, OBJECT-BASED IMAGE ANALYSIS APPROACH IN ASSESSING BIODIVERSITY FOR NEPAL AND NEW ZEALAND SITES.

机译:评估尼泊尔和新西兰站点生物多样性的一种多目标,基于对象的图像分析方法。

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The relationship between remote sensing and biodiversity is well recognised due to the spatial component inherent in the landscape. The landscape phenomena exist and interact in multiple scales. The interaction in multiple scales occurs within the scale and across the scales. To address the issue of this interaction, we develop a framework in multi-scale environment from remotely sensed data of diverse geographical territories (Nepal and New Zealand) by extracting the meaningful image objects, analysing such image objects and relating these image objects to landscape objects. In relating the image objects to landscape objects, we apply thematic, topological and geometric indices such as the Normalised Difference Vegetation Index (NDVI), the Grey Level Co-occurrence Matrix (GLCM), shape index, area, density and asymmetry for image objects. These indices and the developed framework are tested for pertinent scale (the most appropriate scale for analysis) issues using statistical measure of association - Relative Interquartile Range (RIQR). The test result shows that the pertinent scale can be achieved and it is dependent on interpreter's objective, heterogeneity / homogeneity of the landscape. This methodology shows that pertinent scale issue is promising in the study of biodiversity and associated landscape phenomena.
机译:由于景观固有的空间成分,遥感与生物多样性之间的关系得到了很好的认识。景观现象存在并且以多种尺度相互作用。多个标度之间的交互作用发生在标度内和整个标度中。为了解决这种相互作用的问题,我们通过提取有意义的图像对象,分析此类图像对象并将这些图像对象与景观对象相关联,从不同地理区域(尼泊尔和新西兰)的遥感数据中开发了一个多尺度环境中的框架。在将图像对象与景观对象相关联时,我们应用主题,拓扑和几何指标,例如归一化植被指数(NDVI),灰度共生矩阵(GLCM),形状指标,面积,密度和不对称性。使用关联的统计量度-相对四分位数范围(RIQR)对这些指数和已开发的框架进行了相关规模(最适合分析的规模)问题的测试。测试结果表明,可以实现相关尺度,并且取决于解释者的目标,景观的异质性/同质性。这种方法表明,有关尺度的问题在生物多样性和相关景观现象的研究中很有前途。

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