论文标题

澳大利亚植物生物多样性估计的Desis高光谱数据的定量评估

Quantitative Assessment of DESIS Hyperspectral Data for Plant Biodiversity Estimation in Australia

论文作者

Guo, Yiqing, Mokany, Karel, Ong, Cindy, Moghadam, Peyman, Ferrier, Simon, Levick, Shaun R.

论文摘要

陆生植物的多样性在保持稳定,健康和生产的生态系统方面起着关键作用。尽管遥感被视为估计植物多样性的有前途且具有成本效益的代理,但缺乏关于如何从Spaceborne Hyperfectral数据中推断出植物多样性的定量研究。在这项研究中,我们评估了DLR接地传感成像光谱仪(DESIS)捕获的高光谱数据的能力,以估计澳大利亚东南部南部层层和雪山区域的植物物种丰富度。首先通过主成分分析,规范相关分析和部分最小二乘分析从Desis光谱中提取光谱特征。然后在提取的特征和植物物种丰富度之间进行了回归,并具有普通的最小二乘回归,内核脊回归和高斯过程回归。根据两倍的交叉验证方案,使用相关系数($ r $)和根平方错误(RMSE)评估结果。凭借最佳性能的模型,$ r $为0.71,而南部Tablelands地区的RMSE为5.99,而$ R $为0.62,而Snowy Mountains地区的RMSE为6.20。这项研究中报道的评估结果为未来的研究提供了支持,以了解太空传播高光谱测量与陆地植物生物多样性之间的关系。

Diversity of terrestrial plants plays a key role in maintaining a stable, healthy, and productive ecosystem. Though remote sensing has been seen as a promising and cost-effective proxy for estimating plant diversity, there is a lack of quantitative studies on how confidently plant diversity can be inferred from spaceborne hyperspectral data. In this study, we assessed the ability of hyperspectral data captured by the DLR Earth Sensing Imaging Spectrometer (DESIS) for estimating plant species richness in the Southern Tablelands and Snowy Mountains regions in southeast Australia. Spectral features were firstly extracted from DESIS spectra with principal component analysis, canonical correlation analysis, and partial least squares analysis. Then regression was conducted between the extracted features and plant species richness with ordinary least squares regression, kernel ridge regression, and Gaussian process regression. Results were assessed with the coefficient of correlation ($r$) and Root-Mean-Square Error (RMSE), based on a two-fold cross validation scheme. With the best performing model, $r$ is 0.71 and RMSE is 5.99 for the Southern Tablelands region, while $r$ is 0.62 and RMSE is 6.20 for the Snowy Mountains region. The assessment results reported in this study provide supports for future studies on understanding the relationship between spaceborne hyperspectral measurements and terrestrial plant biodiversity.

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