Litcius/Paper detail

A statistical pipeline for identifying physical features that differentiate classes of 3D shapes

Bruce Wang, Timothy Sudijono, Henry Kirveslahti, Tingran Gao, Douglas Boyer, Sayan Mukherjee, Lorin Crawford

2021The Annals of Applied Statistics20 citationsDOIOpen Access PDF

Abstract

The recent curation of large-scale databases with 3D surface scans of shapes has motivated the development of tools that better detect global patterns in morphological variation. Studies, which focus on identifying differences between shapes, have been limited to simple pairwise comparisons and rely on prespecified landmarks (that are often known). We present SINATRA, the first statistical pipeline for analyzing collections of shapes without requiring any correspondences. Our novel algorithm takes in two classes of shapes and highlights the physical features that best describe the variation between them. We use a rigorous simulation framework to assess our approach. Lastly, as a case study we use SINATRA to analyze mandibular molars from four different suborders of primates and demonstrate its ability recover known morphometric variation across phylogenies.

Topics & Concepts

Pipeline (software)Variation (astronomy)Computer scienceFocus (optics)Pairwise comparisonArtificial intelligenceScale (ratio)Pattern recognition (psychology)CartographyGeographyOpticsProgramming languagePhysicsAstrophysicsMorphological variations and asymmetryHuman Pose and Action RecognitionImage Retrieval and Classification Techniques