LGCGGRMLOct 17, 2021

Elastic Shape Analysis of Tree-like 3D Objects using Extended SRVF Representation

arXiv:2110.08693v43 citations
Originality Incremental advance
AI Analysis

This work addresses shape analysis for biological researchers studying neurons and botanical trees, offering a more accurate method for comparing and synthesizing tree-like 3D objects, though it is incremental as it builds on the SRVF representation.

The paper tackles the problem of analyzing complex 3D biological objects like neurons and botanical trees by developing a novel mathematical framework that extends the Square-Root Velocity Function (SRVF) to represent, compare, and compute geodesic deformations between tree-like shapes, capturing full elasticity and topological variations while avoiding shrinkage issues from existing metrics.

How can one analyze detailed 3D biological objects, such as neurons and botanical trees, that exhibit complex geometrical and topological variation? In this paper, we develop a novel mathematical framework for representing, comparing, and computing geodesic deformations between the shapes of such tree-like 3D objects. A hierarchical organization of subtrees characterizes these objects -- each subtree has the main branch with some side branches attached -- and one needs to match these structures across objects for meaningful comparisons. We propose a novel representation that extends the Square-Root Velocity Function (SRVF), initially developed for Euclidean curves, to tree-shaped 3D objects. We then define a new metric that quantifies the bending, stretching, and branch sliding needed to deform one tree-shaped object into the other. Compared to the current metrics, such as the Quotient Euclidean Distance (QED) and the Tree Edit Distance (TED), the proposed representation and metric capture the full elasticity of the branches (i.e., bending and stretching) as well as the topological variations (i.e., branch death/birth and sliding). It completely avoids the shrinkage that results from the edge collapse and node split operations of the QED and TED metrics. We demonstrate the utility of this framework in comparing, matching, and computing geodesics between biological objects such as neurons and botanical trees. The framework is also applied to various shape analysis tasks: (i) symmetry analysis and symmetrization of tree-shaped 3D objects, (ii) computing summary statistics (means and modes of variations) of populations of tree-shaped 3D objects, (iii) fitting parametric probability distributions to such populations, and (iv) finally synthesizing novel tree-shaped 3D objects through random sampling from estimated probability distributions.

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