Scalable Semantic 3D Mapping of Coral Reefs with Deep Learning
Jonathan Sauder, Guilhem Banc-Prandi, Anders Meibom, Devis Tuia

TL;DR
This paper introduces a scalable, automated system for high-resolution 3D mapping and semantic analysis of coral reefs using deep learning, significantly reducing manual effort and costs, and enabling rapid environmental monitoring.
Contribution
It presents a novel integrated approach combining machine learning-based 3D mapping with semantic segmentation for underwater environments, enhancing scalability and automation.
Findings
High-precision 3D semantic mapping achieved at scale
Analysis of a 100 m video transect within 5 minutes
Significant reduction in labor and equipment costs
Abstract
Coral reefs are among the most diverse ecosystems on our planet, and are depended on by hundreds of millions of people. Unfortunately, most coral reefs are existentially threatened by global climate change and local anthropogenic pressures. To better understand the dynamics underlying deterioration of reefs, monitoring at high spatial and temporal resolution is key. However, conventional monitoring methods for quantifying coral cover and species abundance are limited in scale due to the extensive manual labor required. Although computer vision tools have been employed to aid in this process, in particular SfM photogrammetry for 3D mapping and deep neural networks for image segmentation, analysis of the data products creates a bottleneck, effectively limiting their scalability. This paper presents a new paradigm for mapping underwater environments from ego-motion video, unifying 3D…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Advanced Vision and Imaging · Remote Sensing and LiDAR Applications
MethodsCorrelation Alignment for Deep Domain Adaptation
