Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence

Coral reef ecosystems hold important biological, ecological and economic value, but are in decline due to a combination of global and local stressors resulting in loss of reef structural complexity and biodiversity. Given the foundational role reef structure plays in marine ecosystem health and dive...

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Main Authors: Aviv Suan, Simone Franceschini, Joushua Madin, Elizabeth Madin
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Ecological Informatics
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Online Access:http://www.sciencedirect.com/science/article/pii/S1574954124005004
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author Aviv Suan
Simone Franceschini
Joushua Madin
Elizabeth Madin
author_facet Aviv Suan
Simone Franceschini
Joushua Madin
Elizabeth Madin
author_sort Aviv Suan
collection DOAJ
description Coral reef ecosystems hold important biological, ecological and economic value, but are in decline due to a combination of global and local stressors resulting in loss of reef structural complexity and biodiversity. Given the foundational role reef structure plays in marine ecosystem health and diversity, there is a need for tools capable of quantifying this complexity over larger scales and higher resolutions. In this study, we present an approach that integrates drones, various color space information, and deep learning neural networks to predict three-dimensional complexity metrics—height range, rugosity and fractal dimension—across large (thousands of m2) spatial scales. The validation of our model resulted in R2 values of 0.71, 0.65, and 0.56 for each metric, respectively, indicating a robust predictive capability. Because these three complexity metrics can be depicted through a plane equation, we could calculate the metric with the lowest color space predictive accuracy from the other two, thereby enhancing overall predictive accuracy. Our deep learning approach offers a scalable solution to measure structural complexity of shallow coral reefs, providing a balance of spatial resolution and extent that is more ecologically relevant than other large-scale, airborne approaches. The application of this method to four distinct patch reef habitats revealed unique structural signatures among seemingly similar reefs, highlighting the importance of site-specific considerations in assessing reef complexity. A scalable, high-resolution method such as we present will provide a more cost-effective and nuanced understanding of reef habitats, ultimately aiding in their conservation and management amid ongoing environmental challenges.
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spelling doaj-art-f030582df9f8413cb67fde6a54a5d9662025-01-19T06:24:39ZengElsevierEcological Informatics1574-95412025-03-0185102958Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligenceAviv Suan0Simone Franceschini1Joushua Madin2Elizabeth Madin3Corresponding author.; Hawai‘i Institute of Marine Biology, University of Hawai‘i at Mānoa, Kāne‘ohe, HI 96744, USAHawai‘i Institute of Marine Biology, University of Hawai‘i at Mānoa, Kāne‘ohe, HI 96744, USAHawai‘i Institute of Marine Biology, University of Hawai‘i at Mānoa, Kāne‘ohe, HI 96744, USAHawai‘i Institute of Marine Biology, University of Hawai‘i at Mānoa, Kāne‘ohe, HI 96744, USACoral reef ecosystems hold important biological, ecological and economic value, but are in decline due to a combination of global and local stressors resulting in loss of reef structural complexity and biodiversity. Given the foundational role reef structure plays in marine ecosystem health and diversity, there is a need for tools capable of quantifying this complexity over larger scales and higher resolutions. In this study, we present an approach that integrates drones, various color space information, and deep learning neural networks to predict three-dimensional complexity metrics—height range, rugosity and fractal dimension—across large (thousands of m2) spatial scales. The validation of our model resulted in R2 values of 0.71, 0.65, and 0.56 for each metric, respectively, indicating a robust predictive capability. Because these three complexity metrics can be depicted through a plane equation, we could calculate the metric with the lowest color space predictive accuracy from the other two, thereby enhancing overall predictive accuracy. Our deep learning approach offers a scalable solution to measure structural complexity of shallow coral reefs, providing a balance of spatial resolution and extent that is more ecologically relevant than other large-scale, airborne approaches. The application of this method to four distinct patch reef habitats revealed unique structural signatures among seemingly similar reefs, highlighting the importance of site-specific considerations in assessing reef complexity. A scalable, high-resolution method such as we present will provide a more cost-effective and nuanced understanding of reef habitats, ultimately aiding in their conservation and management amid ongoing environmental challenges.http://www.sciencedirect.com/science/article/pii/S1574954124005004Coral reefsStructural complexityDronesDeep learningPredictive modelingConservation
spellingShingle Aviv Suan
Simone Franceschini
Joushua Madin
Elizabeth Madin
Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
Ecological Informatics
Coral reefs
Structural complexity
Drones
Deep learning
Predictive modeling
Conservation
title Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
title_full Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
title_fullStr Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
title_full_unstemmed Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
title_short Quantifying 3D coral reef structural complexity from 2D drone imagery using artificial intelligence
title_sort quantifying 3d coral reef structural complexity from 2d drone imagery using artificial intelligence
topic Coral reefs
Structural complexity
Drones
Deep learning
Predictive modeling
Conservation
url http://www.sciencedirect.com/science/article/pii/S1574954124005004
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AT simonefranceschini quantifying3dcoralreefstructuralcomplexityfrom2ddroneimageryusingartificialintelligence
AT joushuamadin quantifying3dcoralreefstructuralcomplexityfrom2ddroneimageryusingartificialintelligence
AT elizabethmadin quantifying3dcoralreefstructuralcomplexityfrom2ddroneimageryusingartificialintelligence