Accurate data on community structure is a priority issue in studying coastal habitats facing human pressures. The recent development of remote sensing tools has offered a ground-breaking way to collect ecological information at a very fine scale, especially using low-cost aerial photogrammetry. Although coastal mapping is carried out using Unmanned Aerial Vehicles (UAVs or drones), they can provide limited information regarding underwater benthic habitats. To achieve a precise characterisation of underwater habitat types and species assemblages, new imagery acquisition instruments become necessary to support accurate mapping programmes. Therefore, this study aims to evaluate an integrated approach based on Structure from Motion (SfM) photogrammetric acquisition using low-cost Unmanned Aerial (UAV) and Surface (USV) Vehicles to finely map shallow benthic communities, which determine the high complexity of coastal environments. The photogrammetric outputs, including both UAV-based high (sub-meter) and USV-based ultra-high (sub-centimetre) raster products such as orthophoto mosaics and Digital Surface Models (DSMs), were classified using Object-Based Image Analysis (OBIA) approach. The application of a supervised learning method based on Support Vector Machines (SVM) classification resulted in good overall classification accuracies > 70%, proving to be a practical and feasible tool for analysing both aerial and underwater ultra-high spatial resolution imagery. The detected seabed cover classes included above and below-water key coastal features of ecological interest such as seagrass beds, “banquettes” deposits and hard bottoms. Using USV-based imagery can considerably improve the identification of specific organisms with a critical role in benthic communities, such as photophilous macroalgal beds. We conclude that the integrated use of low-cost unmanned aerial and surface vehicles and GIS processing is an effective strategy for allowing fully remote detailed data on shallow water benthic communities.

Coastal benthic habitat mapping and monitoring by integrating aerial and water surface low-cost drones / Ventura, Daniele; Grosso, Luca; Pensa, Davide; Casoli, Edoardo; Mancini, Gianluca; Valente, Tommaso; Scardi, Michele; Rakaj, Arnold. - In: FRONTIERS IN MARINE SCIENCE. - ISSN 2296-7745. - 9:(2023), pp. 1-15. [10.3389/fmars.2022.1096594]

Coastal benthic habitat mapping and monitoring by integrating aerial and water surface low-cost drones

Ventura, Daniele
Methodology
;
Pensa, Davide
Data Curation
;
Casoli, Edoardo
Writing – Review & Editing
;
Mancini, Gianluca
Writing – Review & Editing
;
Valente, Tommaso
Validation
;
2023

Abstract

Accurate data on community structure is a priority issue in studying coastal habitats facing human pressures. The recent development of remote sensing tools has offered a ground-breaking way to collect ecological information at a very fine scale, especially using low-cost aerial photogrammetry. Although coastal mapping is carried out using Unmanned Aerial Vehicles (UAVs or drones), they can provide limited information regarding underwater benthic habitats. To achieve a precise characterisation of underwater habitat types and species assemblages, new imagery acquisition instruments become necessary to support accurate mapping programmes. Therefore, this study aims to evaluate an integrated approach based on Structure from Motion (SfM) photogrammetric acquisition using low-cost Unmanned Aerial (UAV) and Surface (USV) Vehicles to finely map shallow benthic communities, which determine the high complexity of coastal environments. The photogrammetric outputs, including both UAV-based high (sub-meter) and USV-based ultra-high (sub-centimetre) raster products such as orthophoto mosaics and Digital Surface Models (DSMs), were classified using Object-Based Image Analysis (OBIA) approach. The application of a supervised learning method based on Support Vector Machines (SVM) classification resulted in good overall classification accuracies > 70%, proving to be a practical and feasible tool for analysing both aerial and underwater ultra-high spatial resolution imagery. The detected seabed cover classes included above and below-water key coastal features of ecological interest such as seagrass beds, “banquettes” deposits and hard bottoms. Using USV-based imagery can considerably improve the identification of specific organisms with a critical role in benthic communities, such as photophilous macroalgal beds. We conclude that the integrated use of low-cost unmanned aerial and surface vehicles and GIS processing is an effective strategy for allowing fully remote detailed data on shallow water benthic communities.
2023
UAV; mapping; drone; Posidonia; Mediterranean sea; structure from motion; photogrammetry
01 Pubblicazione su rivista::01a Articolo in rivista
Coastal benthic habitat mapping and monitoring by integrating aerial and water surface low-cost drones / Ventura, Daniele; Grosso, Luca; Pensa, Davide; Casoli, Edoardo; Mancini, Gianluca; Valente, Tommaso; Scardi, Michele; Rakaj, Arnold. - In: FRONTIERS IN MARINE SCIENCE. - ISSN 2296-7745. - 9:(2023), pp. 1-15. [10.3389/fmars.2022.1096594]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1664685
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