Genus-Physiognomy-Ecosystem (GPE) System for Satellite-Based Classification of Plant Communities

IF 1.7 Q3 ECOLOGY Ecologies Pub Date : 2021-04-09 DOI:10.3390/ECOLOGIES2020012
Ram C. Sharma
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引用次数: 8

Abstract

Vegetation mapping and monitoring is important as the composition and distribution of vegetation has been greatly influenced by land use change and the interaction of land use change and climate change. The purpose of vegetation mapping is to discover the extent and distribution of plant communities within a geographical area of interest. The paper introduces the Genus-Physiognomy-Ecosystem (GPE) system for the organization of plant communities from the perspective of satellite remote sensing. It was conceived for broadscale operational vegetation mapping by organizing plant communities according to shared genus and physiognomy/ecosystem inferences, and it offers an intermediate level between the physiognomy/ecosystem and dominant species for the organization of plant communities. A machine learning and cross-validation approach was employed by utilizing multi-temporal Landsat 8 satellite images on a regional scale for the classification of plant communities at three hierarchical levels: (i) physiognomy, (ii) GPE, and (iii) dominant species. The classification at the dominant species level showed many misclassifications and undermined its application for broadscale operational mapping, whereas the GPE system was able to lessen the complexities associated with the dominant species level classification while still being capable of distinguishing a wider variety of plant communities. The GPE system therefore provides an easy-to-understand approach for the operational mapping of plant communities, particularly on a broad scale.
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基于卫星植物群落分类的属-地貌-生态系统(GPE)系统
植被测绘和监测非常重要,因为植被的组成和分布在很大程度上受到土地利用变化以及土地利用变化和气候变化相互作用的影响。植被测绘的目的是发现感兴趣的地理区域内植物群落的范围和分布。本文从卫星遥感的角度介绍了用于植物群落组织的属生理生态系统(GPE)。它是通过根据共有属和地貌/生态系统推断组织植物群落来进行大规模操作性植被测绘的,它为植物群落的组织提供了地貌/生态系和优势物种之间的中间水平。采用机器学习和交叉验证方法,利用区域尺度上的多时相陆地卫星8号卫星图像,在三个层次上对植物群落进行分类:(i)地貌、(ii)GPE和(iii)优势物种。优势物种级别的分类显示出许多错误的分类,并破坏了其在大规模操作制图中的应用,而GPE系统能够减少与优势物种级别分类相关的复杂性,同时仍然能够区分更广泛的植物群落。因此,GPE系统为植物群落的操作制图提供了一种易于理解的方法,特别是在大范围内。
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