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Field spectroradiometer and simulated multispectral bands for discriminating invasive species from morphologically similar cohabitant plants

机译:场光谱仪和模拟多光谱带,用于区分形态相似的同居植物中的入侵物种

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One of the challenges in fighting plant invasions is the inefficiency of identifying their distribution using field inventory techniques. Remote sensing has the potential to alleviate this problem effectively using spectral profiling for species discrimination. However, little is known about the capability of remote sensing in discriminating between shrubby invasive plants with narrow leaf structures and other cohabitants with similar ecological niche. The aims of this study were therefore to (1) assess the classification performance of field spectroradiometer data among three bushy and shruby plants (Artemesia afra, Asparagus laricinus, and Seriphium plumosum) from the coexistent plant species largely dominated by acacia and grass species, and (2) explore the performance of simulated spectral bands of five space-borne images (Landsat 8, Sentinel 2A, SPOT 6, Pleiades 1B, and WorldView-3). Two machine-learning classifiers (boosted trees classification and support vector machines) were used to classify raw hyperspectral (n=688) and simulated multispectral wavelengths. Relatively high classification accuracies were obtained for the invasive species using the original hyperspectral bands for both classifiers (overall accuracy, OA=83-97%). The simulated data resulted in higher accuracies for Landsat 8, Sentinel 2A, and WorldView-3 compared to those computed for bands simulated to SPOT 6 and Pleiades 1B data. These findings suggest the potential of remote-sensing techniques in the discrimination of different plant species with similar morphological characteristics occupying the same niche.
机译:对抗植物入侵的挑战之一是使用现场清单技术无法确定植物的分布。遥感有可能通过使用频谱分析进行物种识别来有效缓解这一问题。然而,关于遥感技术在区分叶片结构狭窄的灌木状入侵植物和具有类似生态位的其他同居植物方面的能力知之甚少。因此,本研究的目的是(1)在主要由金合欢和草木种共存的三种植物中评估三种灌木和灌木植物(蒿木,芦笋和羽扇豆)中的现场光谱辐射计数据的分类性能;以及(2)探索了五个星载图像(Landsat 8,Sentinel 2A,SPOT 6,Pleiades 1B和WorldView-3)的模拟光谱带的性能。两个机器学习分类器(增强树分类和支持向量机)用于分类原始高光谱(n = 688)和模拟的多光谱波长。使用两个分类器的原始高光谱谱带,对入侵物种获得了较高的分类精度(总体准确性,OA = 83-97%)。与针对SPOT 6和P 1B数据模拟的频段所计算的结果相比,模拟数据对Landsat 8,Sentinel 2A和WorldView-3的准确性更高。这些发现表明,遥感技术在区分具有相同生态位的具有相似形态特征的不同植物物种方面具有潜力。

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