Planar morphometry via functional shape data analysis and quasi-conformal mappings
TLDR
FDA-QC is a new method for planar shape analysis combining functional data and quasi-conformal maps to capture both boundary and interior features.
Key contributions
- Introduces FDA-QC, a novel method for planar shape morphometry considering both boundary and interior features.
- Registers boundaries using elastic matching, extending correspondence to interiors via quasi-conformal maps.
- Provides a unified framework for shape morphing and quantitative analysis of shape variation.
- Demonstrates improved capture of morphological variation in leaves and insect wings compared to existing methods.
Why it matters
This paper introduces FDA-QC, a comprehensive method for analyzing planar shapes by integrating both boundary and interior features, a gap in previous methods. This unified approach enables more accurate quantification of shape changes and a deeper understanding of biological growth and form, validated on real datasets.
Original Abstract
The study of shapes is one of the most fundamental problems in life sciences. Although numerous methods have been developed for the morphometry of planar biological shapes over the past several decades, most of them focus solely on either the outer silhouettes or the interior features of the shapes without capturing the coupling between them. Moreover, many existing shape mapping techniques are limited to establishing correspondence between planar structures without further allowing for the quantitative analysis or modelling of shape changes. In this work, we introduce FDA-QC, a novel planar morphometry method that combines functional shape data analysis (FDA) techniques and quasi-conformal (QC) mappings, taking both the boundary and interior of the planar shapes into consideration. Specifically, closed planar curves are represented by their square-root velocity functions and registered by elastic matching in the function space. The induced boundary correspondence is then extended to the entire planar domains by a quasi-conformal map, optionally with landmark constraints. Moreover, the proposed FDA-QC method can naturally lead to a unified framework for shape morphing and shape variation quantification. We apply the FDA-QC method to various leaf and insect wing datasets, and the experimental results show that the proposed combined approach captures morphological variation more effectively than purely boundary-based or interior-based descriptions. Altogether, our work paves a new way for understanding the growth and form of planar biological shapes.
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