Mapping plant species in mixed grassland communities using close range imaging spectroscopy

Lopatin, Javier; Fassnacht, Fabian E.; Kattenborn, Teja; Schmidtlein, Sebastian

Abstract

Grasslands are one of the ecosystems that have been strongly affected by anthropogenic impacts. The state-ofthe-art in monitoring changes in grassland species composition is to conduct repeated plot-based vegetation surveys that assess the occurrence and cover of plants. These plot-based surveys are typically limited to comparably small areas and the quality of the cover estimates depends strongly on the experience and performance of the surveyors. Here, we investigate the possibility of a semi-automated, image-based method for cover estimates, by analyzing the applicability of very high spatial resolution hyperspectral data to classify grassland species at the level of individuals. This individual-oriented approach is seen as an alternative to community oriented remote sensing depicting canopy reflectance as the total of mixed species reflectance. An AISA + imaging spectrometer mounted on a scaffold was used to scan 1 m(2) grassland plots and assess the impact of four sources of variation on the predicted species cover: (1) the spatial resolution of the scans, (2) complexity, i.e. species number and structural diversity, (3) the species cover and (4) the share of functional types (graminoids and forbs). Classifications were conducted using a support vector machine classification with a linear kemel, obtaining a median Kappa of 0.8. Species cover estimations reached median r(2) and root mean square errors (RMSE) of 0.6 and 6.2% respectively. We found that the spatial resolution and diversity level (mainly structural diversity) were the most important sources of variation affecting the performance of the proposed approach. A spatial resolution below 1 cm produced relatively good models for estimating species-specific coverages (r(2) = similar to 0.6; RMSE = similar to 7.5%) while predictions using pixel sizes over that threshold failed in this individual-oriented approach (r(2) = similar to 0.17; RMSE = similar to 20.7%). Areas with low inter-species overlap were better suited than areas with frequent inter-species overlap. We conclude that the application of very high resolution hyperspectral remote sensing in environments with low structural heterogeneity is suited for individual-oriented mapping of grassland plant species.

Más información

Título según WOS: ID WOS:000412866400002 Not found in local WOS DB
Título de la Revista: REMOTE SENSING OF ENVIRONMENT
Volumen: 201
Editorial: Elsevier Science Inc.
Fecha de publicación: 2017
Página de inicio: 12
Página final: 23
DOI:

10.1016/j.rse.2017.08.031

Notas: ISI