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Autores principales: Lin, Huahua, Cai, Xiaohao, Nixon, Mark, Mulqueeney, James M., Ezard, Thomas H. G.
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2511.02142
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author Lin, Huahua
Cai, Xiaohao
Nixon, Mark
Mulqueeney, James M.
Ezard, Thomas H. G.
author_facet Lin, Huahua
Cai, Xiaohao
Nixon, Mark
Mulqueeney, James M.
Ezard, Thomas H. G.
contents Planktonic foraminifera, marine protists characterized by their intricate chambered shells, serve as valuable indicators of past and present environmental conditions. Understanding their chamber growth trajectory provides crucial insights into organismal development and ecological adaptation under changing environments. However, automated tracing of chamber growth from imaging data remains largely unexplored, with existing approaches relying heavily on manual segmentation of each chamber, which is time-consuming and subjective. In this study, we propose an end-to-end pipeline that integrates instance segmentation, a computer vision technique not extensively explored in foraminifera, with a dedicated chamber ordering algorithm to automatically reconstruct three-dimensional growth trajectories from high-resolution computed tomography scans. We quantitatively and qualitatively evaluate multiple instance segmentation methods, each optimized for distinct spatial features of the chambers, and examine their downstream influence on growth-order reconstruction accuracy. Experimental results on expert-annotated datasets demonstrate that the proposed pipeline substantially reduces manual effort while maintaining biologically meaningful accuracy. Although segmentation models exhibit under-segmentation in smaller chambers due to reduced voxel fidelity and subtle inter-chamber connectivity, the chamber-ordering algorithm remains robust, achieving consistent reconstruction of developmental trajectories even under partial segmentation. This work provides the first fully automated and reproducible pipeline for digital foraminiferal growth analysis, establishing a foundation for large-scale, data-driven ecological studies.
format Preprint
id arxiv_https___arxiv_org_abs_2511_02142
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Instance Segmentation to 3D Growth Trajectory Reconstruction in Planktonic Foraminifera
Lin, Huahua
Cai, Xiaohao
Nixon, Mark
Mulqueeney, James M.
Ezard, Thomas H. G.
Computer Vision and Pattern Recognition
Planktonic foraminifera, marine protists characterized by their intricate chambered shells, serve as valuable indicators of past and present environmental conditions. Understanding their chamber growth trajectory provides crucial insights into organismal development and ecological adaptation under changing environments. However, automated tracing of chamber growth from imaging data remains largely unexplored, with existing approaches relying heavily on manual segmentation of each chamber, which is time-consuming and subjective. In this study, we propose an end-to-end pipeline that integrates instance segmentation, a computer vision technique not extensively explored in foraminifera, with a dedicated chamber ordering algorithm to automatically reconstruct three-dimensional growth trajectories from high-resolution computed tomography scans. We quantitatively and qualitatively evaluate multiple instance segmentation methods, each optimized for distinct spatial features of the chambers, and examine their downstream influence on growth-order reconstruction accuracy. Experimental results on expert-annotated datasets demonstrate that the proposed pipeline substantially reduces manual effort while maintaining biologically meaningful accuracy. Although segmentation models exhibit under-segmentation in smaller chambers due to reduced voxel fidelity and subtle inter-chamber connectivity, the chamber-ordering algorithm remains robust, achieving consistent reconstruction of developmental trajectories even under partial segmentation. This work provides the first fully automated and reproducible pipeline for digital foraminiferal growth analysis, establishing a foundation for large-scale, data-driven ecological studies.
title From Instance Segmentation to 3D Growth Trajectory Reconstruction in Planktonic Foraminifera
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.02142