Saved in:
Bibliographic Details
Main Authors: Medialdea, Laura, Arribas-Gil, Ana, Pérez-Romero, Álvaro, Gómez, Amador
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.15491
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917216787628032
author Medialdea, Laura
Arribas-Gil, Ana
Pérez-Romero, Álvaro
Gómez, Amador
author_facet Medialdea, Laura
Arribas-Gil, Ana
Pérez-Romero, Álvaro
Gómez, Amador
contents Current alignment-based methods for classification in geometric morphometrics do not generally address the classification of new individuals that were not part of the study sample. However, in the context of infant and child nutritional assessment from body shape images this is a relevant problem. In this setting, classification rules obtained on the shape space from a reference sample cannot be used on out-of-sample individuals in a straightforward way. Indeed, a series of sample dependent processing steps, such as alignment (Procrustes analysis, for instance) or allometric regression, need to be conducted before the classification rule can be applied. This work proposes ways of obtaining shape coordinates for a new individual and analyzes the effect of using different template configurations on the sample of study as target for registration of the out-of-sample raw coordinates. Understanding sample characteristics and collinearity among shape variables is crucial for optimal classification results when evaluating children's nutritional status using arm shape analysis from photos. The SAM Photo Diagnosis App\c{opyright} Program's goal is to develop an offline smartphone tool, enabling updates of the training sample across different nutritional screening campaigns.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15491
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Geometric Morphometrics approach for classifying children's nutritional status on out of sample data
Medialdea, Laura
Arribas-Gil, Ana
Pérez-Romero, Álvaro
Gómez, Amador
Applications
Current alignment-based methods for classification in geometric morphometrics do not generally address the classification of new individuals that were not part of the study sample. However, in the context of infant and child nutritional assessment from body shape images this is a relevant problem. In this setting, classification rules obtained on the shape space from a reference sample cannot be used on out-of-sample individuals in a straightforward way. Indeed, a series of sample dependent processing steps, such as alignment (Procrustes analysis, for instance) or allometric regression, need to be conducted before the classification rule can be applied. This work proposes ways of obtaining shape coordinates for a new individual and analyzes the effect of using different template configurations on the sample of study as target for registration of the out-of-sample raw coordinates. Understanding sample characteristics and collinearity among shape variables is crucial for optimal classification results when evaluating children's nutritional status using arm shape analysis from photos. The SAM Photo Diagnosis App\c{opyright} Program's goal is to develop an offline smartphone tool, enabling updates of the training sample across different nutritional screening campaigns.
title Geometric Morphometrics approach for classifying children's nutritional status on out of sample data
topic Applications
url https://arxiv.org/abs/2601.15491