期刊论文详细信息
WATER RESEARCH 卷:186
Submerged macrophyte assessment in rivers: An automatic mapping method using Pleiades imagery
Article
Espel, Diane1,2  Courty, Stephanie2  Auda, Yves3  Sheeren, David4  Elger, Arnaud1 
[1] Univ Toulouse, CNRS, Lab Ecol Fonct & Environm, Toulouse, France
[2] Adict Solut, Toulouse, France
[3] GET, Toulouse, France
[4] Univ Toulouse, INRAE, UMR DYNAFOR, Castanet Tolosan, France
关键词: Aquatic vegetation;    Remote sensing;    Machine learning;    Fluvial ecosystem;    Random Forest;    Support Vector Regression;   
DOI  :  10.1016/j.watres.2020.116353
来源: Elsevier
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【 摘 要 】

Submerged macrophyte monitoring is a major concern for hydrosystem management, particularly for understanding and preventing the potential impacts of global change on ecological functions and services. Macrophyte distribution assessments in rivers are still primarily realized using field monitoring or manual photo-interpretation of aerial images. Considering the lack of applications in fluvial environments, developing operational, low-cost and less time-consuming tools able to automatically map and monitor submerged macrophyte distribution is therefore crucial to support effective management programs. In this study, the suitability of very fine-scale resolution (50 cm) multispectral Pleiades satellite imagery to estimate submerged macrophyte cover, at the scale of a 1 km river section, was investigated. The performance of nonparametric regression methods (based on two reliable and well-known machine learning algorithms for remote sensing applications, Random Forest and Support Vector Regression) were compared for several spectral datasets, testing the relevance of 4 spectral bands (red, green, blue and near-infrared) and two vegetation indices (the Normalized Difference Vegetation Index, NDVI, and the Green-Red Vegetation Index, GRVI), and for several field sampling configurations. Both machine learning algorithms applied to a Pleiades image were able to reasonably well predict macrophyte cover in river ecosystems with promising performance metrics (R-2 above 0.7 and RMSE around 20%). The Random For est algorithm combined to the 4 spectral bands from Pleiades image was the most efficient, particularly for extreme cover values (0% and 100%). Our study also demonstrated that a larger number of fine-scale field sampling entities clearly involved better cover predictions than a smaller number of larger sampling entities. (c) 2020 Elsevier Ltd. All rights reserved.

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