1. Distribution-free learning theory for approximating submanifolds from reptile motion capture data.
- Author
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Powell, Nathan and Kurdila, Andrew J.
- Subjects
- *
RIEMANNIAN manifolds , *REPTILES , *MOTION capture (Human mechanics) , *LEARNING , *SUBMANIFOLDS , *ANIMAL models in research - Abstract
This paper describes the formulation and experimental testing of an estimation of submanifold models of animal motion. It is assumed that the animal motion is supported on a configuration manifold, Q, and that the manifold is homeomorphic to a known smooth, Riemannian manifold, S. Estimation of the configuration submanifold is achieved by finding an unknown mapping, γ , from S to Q. The overall problem is cast as a distribution-free learning problem over the manifold of measurements. This paper defines sufficient conditions that show that the rates of convergence in L μ 2 (S) of approximations of γ correspond to those known for classical distribution-free learning theory over Euclidean space. This paper concludes with a study and discussion of the performance of the proposed method using samples from recent reptile motion studies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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