基于原位高光谱数据的优势湿地植被种类识别与定量研究

Q2 Agricultural and Biological Sciences Transactions of The Royal Society of South Africa Pub Date : 2020-08-27 DOI:10.1080/0035919x.2020.1798301
Mafuratidze Pride, Muumbe Tasiyiwa Priscilla, T. Gara
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引用次数: 2

摘要

湿地植被是湿地物理或化学退化的重要生物指标。湿地植被不断面临自然干扰和不可持续的人类活动的威胁。传统上,常规的实地观测用于监测湿地。然而,由于需要破坏性采样,这些方法成本高昂,需要大量人力资源。遥感为湿地植被的可持续有效管理提供了有用的非破坏性实时信息。本研究的目的是探索高光谱遥感在物种水平上识别湿地植被的潜力。特别是,该研究侧重于利用高光谱数据增强或改善湿地植被物种之间的类别可分性。对哈拉雷湿地的四种优势草种进行了原位高光谱测量。单向方差分析表明,水生植被物种之间存在显著的统计差异。与红边算法相比,植被指数在识别湿地植被方面表现更好,总体准确率分别为82%和60%。
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Dominant wetland vegetation species discrimination and quantification using in situ hyperspectral data
Wetland vegetation is an important bio-indicator of wetland physical or chemical degradation. Wetland vegetation continually faces threats from natural disturbance and unsustainable human activities. Traditionally, routine field observations are used to monitor wetlands. However, these methods are expensive and require a lot of human resources, as destructive sampling is required. Remote sensing offers non-destructive and real-time information useful for sustainable and effective management of wetland vegetation. The aim of this study was to explore the potential of hyperspectral remote sensing for wetland vegetation discrimination at the species level. In particular, the study focuses on enhancing or improving class separability among wetland vegetation species using hyperspectral data. In situ hyperspectral measurements were conducted on four dominant grass species in a wetland in Harare. One-way analysis of variance demonstrated significant statistical differences between hydrophytic vegetation species. Vegetation indices performed better compared to red-edge algorithms at discriminating wetland vegetation, with overall accuracy of 82% and 60%, respectively.
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来源期刊
Transactions of The Royal Society of South Africa
Transactions of The Royal Society of South Africa Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
2.80
自引率
0.00%
发文量
15
期刊介绍: Transactions of the Royal Society of South Africa , published on behalf of the Royal Society of South Africa since 1908, comprises a rich archive of original scientific research in and beyond South Africa. Since 1878, when it was founded as Transactions of the South African Philosophical Society, the Journal’s strength has lain in its multi- and inter-disciplinary orientation, which is aimed at ‘promoting the improvement and diffusion of science in all its branches’ (original Charter). Today this includes natural, physical, medical, environmental and earth sciences as well as any other topic that may be of interest or importance to the people of Africa. Transactions publishes original research papers, review articles, special issues, feature articles, festschriften and book reviews. While coverage emphasizes southern Africa, submissions concerning the rest of the continent are encouraged.
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