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Discrimination of seagrass species and cover classes with in situ hyperspectral data

机译:利用原位高光谱数据区分海草种类和覆盖类型

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Pu, R.; Bell, S.; Baggett, L.; Meyer, C., and Zhao, Y., 2012. Discrimination of seagrass species and cover classes with in situ hyperspectral data. Seagrass habitats support a variety of ecosystem functions and an increasing interest has emerged for utilizing remote sensing to acquire information on the spatial extent and abundance of seagrass vegetation. Here we report on hyperspectral data collected from a combined laboratory and field-based study to examine the spectral qualities of seagrass species and evaluate whether seagrass species and levels of seagrass cover could be distinguished using true in situ hyperspectral data collected by a spectrometer overlying sea-grass-dominated vegetation in a shallow water setting in the central west coast of Florida. We also analyzed hyperspectral data measured in the lab to compare with those from in situ collections. Using a set of 97 field measurements we compared spectra qualities for different seagrass species, levels of seagrass cover, water depths, and substrate types over wavelengths 400-800 nm, using spectral data preprocessing and data transformation. Optimal wavelengths for identifying seagrass species and levels of seagrass cover were determined by two-sample t-tests. We also utilized principal component analysis (PCA) on spectra to evaluate if a set of first five PCs could be used to discriminate effectively among seagrass species and levels of seagrass cover. The experimental results indicate that the best accuracies for identifying species were produced with the data set of the second -derivative normalized spectra. The optimal wavelengths were 450, 500, 520, 550, 600, 620, 680, and 700 nm, most of which are related to the peaks of reflectance and absorption bands by photosynthetic and accessory pigments. A set of five optimal bands produced higher accuracies for identifying seagrass species (overall accuracy = 73% and average accuracy = 75%) compared with those from use of PCA. Data preprocessing techniques were demonstrated to be effective for improving discriminant accuracies of species and levels of seagrass cover.
机译:浦河;贝尔,美国。巴格特湖Meyer,C.和Zhao,Y.,2012。使用原位高光谱数据区分海草种类和覆盖种类。海草栖息地支持多种生态系统功能,人们越来越关注利用遥感来获取有关海草植被的空间范围和丰度的信息。在这里,我们报告从实验室和野外研究的结合中收集的高光谱数据,以检查海草物种的光谱质量,并评估是否可以使用覆盖在海底的光谱仪收集的真实原位高光谱数据来区分海草物种和海草覆盖水平。佛罗里达中部西海岸浅水环境中以草为主的植被。我们还分析了实验室中测得的高光谱数据,以与原位采集的数据进行比较。使用一组97个现场测量值,我们使用光谱数据预处理和数据转换比较了400-800 nm波长下不同海草种类,海草覆盖水平,水深和基质类型的光谱质量。通过两个样本的t检验确定识别海草种类和海草覆盖水平的最佳波长。我们还利用光谱上的主成分分析(PCA)来评估是否可以使用一组前五台PC来有效地区分海草物种和海草覆盖水平。实验结果表明,使用二阶导数归一化光谱的数据集可产生识别物种的最佳准确性。最佳波长为450、500、520、550、600、620、680和700 nm,其中大多数与光合色素和辅助色素的反射率和吸收带峰值有关。与使用PCA相比,一组五个最佳条带对识别海草种类具有更高的准确度(总体准确度= 73%,平均准确度= 75%)。事实证明,数据预处理技术可有效提高判别物种和海草覆盖水平的准确性。

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