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首页> 外文期刊>International journal of remote sensing >Classifying rangeland vegetation type and coverage from NDVI time series using Fourier Filtered Cycle Similarity
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Classifying rangeland vegetation type and coverage from NDVI time series using Fourier Filtered Cycle Similarity

机译:使用傅里叶滤波周期相似度从NDVI时间序列分类草地植被类型和覆盖度

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We present a method for a supervised classification of Normalized Difference Vegetation Index (NDVI) time series that identifies vegetation type and vegetation coverage, absolute in %coverage or relative to a reference NDVI cycle. The shape of the NDVI cycle, which is diagnostic for certain vegetation types, is our primary classifier. A Discrete Fourier Filter is applied to time series data in order to minimize the influence of high-frequency noise on class assignments. Similarity between filtered NDVI cycles is evaluated using a linear regression technique. The correlation coefficients calculated between the Fourier filtered reference cycle and likewise filtered target cycles describe the similarity of their phenology, and the corresponding regression coefficients are an expression of coverage relative to the reference. The regression coefficients are correlated with field measured vegetation coverage. The Fourier Filtered Cycle Similarity method (FFCS) compensates phenological shifts, which are typical in areas with a strong climate gradient, and prevents the break-up of classes of identical vegetation types on the basis of vegetation coverage. Some other advantages compared to traditional unsupervised classifications are: synoptic visualization of vegetation type and coverage variation, independence from scene statistics, and consistent classification of biophysical characteristics only, without rock/soil reflectance dominating class assignment as it often does in unsupervised classifications of sparsely vegetated areas. Using the FFCS classification we differentiated a total of five rangeland vegetation types for the area of Syria including their intra-class coverage variation. Classified classes are dominated by one of two shrub types, one of two annual grass types or a bare soil/sparsely vegetated type.
机译:我们提出一种归一化植被指数(NDVI)时间序列的监督分类方法,该方法可识别植被类型和植被覆盖率,绝对覆盖率绝对值或相对于参考NDVI周期的绝对值。 NDVI周期的形状是我们的主要分类器,可以对某些植被类型进行诊断。离散傅里叶滤波器应用于时间序列数据,以最大程度地减少高频噪声对课程分配的影响。使用线性回归技术评估经过滤波的NDVI周期之间的相似性。在傅立叶滤波后的参考循环和同样滤波后的目标循环之间计算的相关系数描述了它们物候的相似性,并且相应的回归系数是相对于参考的覆盖率表达。回归系数与野外测得的植被覆盖率相关。傅里叶滤波循环相似度法(FFCS)可以补偿物候变化,这是气候梯度较强的地区的典型现象,并可以防止基于植被覆盖度的相同植被类型类别的破坏。与传统的无监督分类相比,其他一些优点是:植被类型和覆盖变化的概要可视化,与场景统计的独立性以及仅生物物理特征的一致分类,而没有岩石/土壤反射率在稀疏植被的无监督分类中经常占据主导地位地区。使用FFCS分类,我们区分了叙利亚地区的五种牧场植被类型,包括其类内覆盖度变化。分类类别以两种灌木类型之一,两种一年生草类型之一或裸土/稀疏植被类型为主。

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