Title :
Intrinsic MANOVA for Riemannian Manifolds with an Application to Kendall´s Space of Planar Shapes
Author :
Huckemann, Stephan ; Hotz, Thomas ; Munk, Axel
Author_Institution :
Inst. for Math. Stochastics, Univ. of Goettingen, Goettingen, Germany
fDate :
4/1/2010 12:00:00 AM
Abstract :
We propose an intrinsic multifactorial model for data on Riemannian manifolds that typically occur in the statistical analysis of shape. Due to the lack of a linear structure, linear models cannot be defined in general; to date only one-way MANOVA is available. For a general multifactorial model, we assume that variation not explained by the model is concentrated near elements defining the effects. By determining the asymptotic distributions of respective sample covariances under parallel transport, we show that they can be compared by standard MANOVA. Often in applications manifolds are only implicitly given as quotients, where the bottom space parallel transport can be expressed through a differential equation. For Kendall´s space of planar shapes, we provide an explicit solution. We illustrate our method by an intrinsic two-way MANOVA for a set of leaf shapes. While biologists can identify genotype effects by sight, we can detect height effects that are otherwise not identifiable.
Keywords :
differential equations; feature extraction; shape recognition; statistical analysis; Kendall space; Riemannian manifolds; bottom space parallel transport; differential equation; genotype effects; intrinsic MANOVA; intrinsic multifactorial model; leaf shapes; planar shapes; statistical analysis; Lie group actions; Riemannian manifolds; Shape analysis; covariance; forest biometry.; geodesics; inference; intrinsic mean; nonlinear multivariate analysis of variance; nonlinear multivariate statistics; orbifolds; orbit spaces; test; Algorithms; Biometry; Image Processing, Computer-Assisted; Models, Theoretical; Multivariate Analysis; Normal Distribution; Pattern Recognition, Automated; Plant Leaves;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2009.117