CoralLite: {\mu}CT Reconstruction of Coral Colonies from Individual Corallites
Jess Jones, Leonardo Bertini, Kenneth Johnson, Erica Hendy, Tilo Burghardt

TL;DR
CoralLite introduces a novel deep learning approach and dataset for 3D reconstruction of individual coral corallites from μCT scans, enabling detailed analysis of coral skeletal growth.
Contribution
The paper presents the first dataset and baseline deep learning model for segmenting and reconstructing corallites in 3D from μCT scans of coral colonies.
Findings
Achieved 0.94 topological accuracy and 0.77 Dice score on same-colony slices.
Demonstrated effective 3D corallite modeling using machine learning.
Published a comprehensive dataset and code for future research.
Abstract
The life history of an individual coral is archived within the accreting skeleton of the colony. While reef-forming coral colonies (e.g. massive sp.) may live for hundreds of years and deposit calcareous structures many metres in height and width, their living tissue is a thin outer surface layer comprised of asexually-dividing polyps that only survive a few years. To understand the rate and timing of polyp division and the consequences for colony skeletal growth, scientists need to track the skeletal corallite deposited around each polyp. Here we propose CoralLite, an annotated CT scan dataset of entire calcareous skeletons and an associated, first corallite deep learning reconstruction baseline. CoralLite combines fully quantified volumetric segmentations with cross-slice linking for visualisations of 3D models for each corallite up to colony scale. For…
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