Using semi-automated classification algorithms in the context of an ecosystem service assessment applied to a temperate atlantic estuary

Afonso, F, Ponte Lira, C, Austen, MC, Broszeit, S, Meloni, R, Nogueira Mendes, R, Salgado, R and Brito, AC 2024 Using semi-automated classification algorithms in the context of an ecosystem service assessment applied to a temperate atlantic estuary. Remote Sensing Applications: Society and Environment, 36. 101306. https://doi.org/10.1016/j.rsase.2024.101306

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Official URL: http://dx.doi.org/10.1016/j.rsase.2024.101306

Abstract/Summary

The growing anthropogenic pressure near estuarine areas is evidence of the relevance of these systems to human well-being, especially because of their delivery of essential ecosystem services and benefits. Estuaries are composed of a rich large selection of habitats frequently organised in complex patterns. Mapping and further understanding of these habitats can contribute significantly to environmental management and conservation. The main goal of this study was to integrate different data sources to perform a supervised image classification, using remote-sensing products with different spatial resolutions and features. It was focused on the Sado Estuary, located on the Portuguese Atlantic coast. Considering the limitation of using free satellite images to map estuary habitats (i.e. limited spectral range and spatial resolution), this study uses a semi-automated supervised and pixel-based classification to overcome some of the derived classification problems. Support Vector Machine classifier was used to map the estuary for future evaluation of ecosystem services provided by each habitat. High-resolution remote sensing data (i.e., Planet Scope satellite images, aerial photographs) with different spectral and spatial features (3 m and 20 cm resolution, respectively) were used with ground truthing data to train the classifier and validate the derived maps. The first step of the classification identified broader classes of habitats in the satellite images based on visual interpretation of ground-truth data. From this output, aerial images were classified into detailed classes, the same procedure was hindered on the satellite images due to spatial resolution constraints. The sand class had the best overall accuracy (96%), due to its contrasts with surrounding objects. While the vegetation (i.e., pioneer saltmarshes) and algae classes had lower accuracy values (49.6–89.0%), possibly due to being still damp or covered in fine sediment This is a common challenge in transitional systems across land-water interfaces, such as wetlands, where the abiotic conditions (e.g. solar exposure, tides) fluctuate heterogeneously over time and space. The findings presented herein revealed the considerable success of this approach. For the purpose of local decision-making, these are relevant outputs that can be replicated in other regions worldwide.

Item Type: Publication - Article
Additional Keywords: Habitat mapping Remote sensing Planet scope imagery Support vector machines Wetlands
Divisions: Plymouth Marine Laboratory > Science Areas > Sea and Society
Depositing User: S Hawkins
Date made live: 13 Aug 2024 10:45
Last Modified: 13 Aug 2024 10:45
URI: https://plymsea.ac.uk/id/eprint/10276

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