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首页> 外文期刊>Journal of Coastal Research: An International Forum for the Littoral Sciences >Developing Hyperspectral Vegetation Indices for Identifying Seagrass Species and Cover Classes
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Developing Hyperspectral Vegetation Indices for Identifying Seagrass Species and Cover Classes

机译:开发高光谱植被指数以识别海草种类和覆盖类别

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Seagrass habitats are characteristic features of shallow waters worldwide and provide a variety of ecosystem functions. To date, few studies have evaluated the efficiency of spectral vegetation indices (VIs) for characterizing aquatic plants. Here we evaluate the use of in situ hyperspectral data and hyperspectral VIs for distinguishing among seagrass species and levels of percentage submerged aquatic vegetation (%SAV) cover in a subtropical shallow water setting. Analysis procedures include (1) retrieving bottom reflectance, (2) calculating correlation matrices of VIs with %SAV cover and F value matrices from analysis of variance among species, (3) testing the difference of VIs between levels of %SAV cover and between species, and (4) discriminating levels of %SAV cover and species by using linear discriminant analysis (LDA) and classification and regression trees (CART) classifiers with selected VIs as input. The experimental results indicated that (1) the best VIs for discriminating the four levels of %SAV cover were simple ratio (SR) VI, normalized difference VI (NDVI), modified simple ratio VI, and NDVI x SR, whereas the best VIs for distinguishing the three seagrass species included the weighted difference VI, soil-adjusted VI (SAW), SAW x SR and transformed SAW; (2) the optimal central wavelengths for constructing the best VIs were 460, 500, 610, 640, 660, and 690 nm with spectral regions ranging from 3 to 20 nm at band width 3 nm, most of which were associated with absorption bands by photosynthetic and other accessory pigments in the visible spectral range. Compared with LDA, CART performed better in discriminating the four levels of %SAV cover and identifying the three seagrass species.
机译:海草栖息地是全世界浅水区的特征,并具有多种生态系统功能。迄今为止,很少有研究评估光谱植被指数(VI)表征水生植物的效率。在这里,我们评估了使用原位高光谱数据和高光谱VI来区分亚热带浅水环境中的海草种类和淹没水生植被(%SAV)覆盖百分比的水平。分析程序包括(1)检索底部反射率;(2)通过物种之间的方差分析计算具有%SAV覆盖率和F值矩阵的VI的相关矩阵;(3)测试%SAV覆盖率水平之间以及物种之间的VI的差异。 ,以及(4)使用线性判别分析(LDA)和分类与回归树(CART)分类器(以选定的VI为输入)来区分%SAV覆盖率和物种。实验结果表明:(1)区分%SAV覆盖率的四个级别的最佳VI是简单比率(SR)VI,归一化差值VI(NDVI),修改后的简单比率VI和NDVI x SR,而对于区分三种海草种类包括加权差异VI,土壤调整VI(SAW),SAW x SR和转化SAW。 (2)构造最佳VI的最佳中心波长为460、500、610、640、660和690 nm,光谱区域的带宽为3 nm至20 nm,带宽为3 nm,其中大多数与吸收带相关在可见光谱范围内的光合色素和其他辅助色素。与LDA相比,CART在区分%SAV覆盖率的四个级别和识别三种海草物种方面表现更好。

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