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SPECTRAL UN-MIXING OF SEAGRASS AND SEAWEED IN PHUKET, SOUTHERN THAILAND

机译:泰国南部普吉岛海藻和海藻的光谱非混合

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Coastal ecosystems such as mangroves, tidal salt marshes, seagrass meadows, and seaweeds store considerable load of carbon in their biomass and soils and act as sink of atmospheric carbon dioxide through primary production. However, it is regarded that there is uncertainty about those global rates, due to uncertainties in their areal extent as well as variability in carbon burial rates among individual ecosystems, especially seagrass meadows. Therefore, seagrass species distribution and their areal extent are crucial for the robust estimates of carbon capture and storage. In the context, satellite data can be the most practical tool for habitat mapping of the coastal ecosystems. In the past study, we developed a mapping method of seaweed and seagrass habitats in Thailand by using Landsat-8 and resulted that the developed method correctly classifies benthic types under condition that the sea water is clear for that sediment is not run-off, however, the method classifies incorrectly in turbid water. Further study was required to examine if Landsat-8 data has a capability to classify the species of seagrasses and seaweeds spectrally and how the capability changes in different water conditions such as water depth and quality. In this study, applying linear spectral mixing and a radiative transfer simulation to reflectance spectra of seagrasses, seaweeds, and sands measured in situ, converting the spectra into Landsat-8 DN values, it was examined whether Landsat-8 has a capability to classify seagrass and seaweed species. As a result, it was shown that Landsat-8 has the capability under constraints that compared spectra are both equally mixed with sand and equally affected by water. Since individual differences were not considered, further study is needed to examine whether individual differences are sufficiently smaller than differences among species and unknown spectrum from real Landsat-8 data can be identified.
机译:沿海生态系统,例如红树林,潮汐盐沼,海草草甸和海藻,在其生物量和土壤中储存了大量的碳,并通过初级生产充当大气二氧化碳的汇入地。但是,人们认为,由于全球范围的不确定性,以及各个生态系统(尤其是海草草甸)之间的碳埋藏率存在差异,因此全球速率存在不确定性。因此,海草的种类分布及其面积范围对于碳捕集与封存的可靠估计至关重要。在这种情况下,卫星数据可能是沿海生态系统栖息地绘图的最实用工具。在过去的研究中,我们使用Landsat-8开发了泰国海藻和海草栖息地的制图方法,得出的结果是,在海水清楚且沉积物不流失的条件下,该开发方法可以正确分类底栖生物类型。 ,该方法在浑浊的水中分类不正确。需要进行进一步的研究,以检查Landsat-8数据是否具有在光谱上对海草和海藻物种进行分类的能力,以及该能力如何在不同的水条件(例如水深和水质)下发生变化。在这项研究中,将线性光谱混合和辐射转移模拟应用于原位测量的海草,海藻和沙子的反射光谱,将光谱转换为Landsat-8 DN值,研究了Landsat-8是否具有对海草进行分类的能力和海藻种类。结果表明,Landsat-8在受限制的条件下具有能力,即所比较的光谱既与沙子均等混合,又受水均等影响。由于未考虑个体差异,因此需要进一步研究以检查个体差异是否比物种间的差异小得多,并且可以从真实的Landsat-8数据中识别出未知光谱。

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