DocumentCode :
70358
Title :
Subspace Learning of Dynamics on a Shape Manifold: A Generative Modeling Approach
Author :
Sheng Yi ; Krim, H.
Author_Institution :
GE Global Res., Schenectady, NY, USA
Volume :
23
Issue :
11
fYear :
2014
fDate :
Nov. 2014
Firstpage :
4907
Lastpage :
4919
Abstract :
In this paper, we propose a novel subspace learning algorithm of shape dynamics. Compared to the previous works, our method is invertible and better characterizes the nonlinear geometry of a shape manifold while retaining a good computational efficiency. In this paper, using a parallel moving frame on a shape manifold, each path of shape dynamics is uniquely represented in a subspace spanned by the moving frame, given an initial condition (the starting point and starting frame). Mathematically, such a representation may be formulated as solving a manifold-valued differential equation, which provides a generative modeling of high-dimensional shape dynamics in a lower dimensional subspace. Given the parallelism and a path on a shape manifold, the parallel moving frame along the path is uniquely determined up to the choice of the starting frame. With an initial frame, we minimize the reconstruction error from the subspace to shape manifold. Such an optimization characterizes well the Riemannian geometry of the manifold by imposing parallelism (equivalent as a Riemannian metric) constraints on the moving frame. The parallelism in this paper is defined by a Levi-Civita connection, which is consistent with the Riemannian metric of the shape manifold. In the experiments, the performance of the subspace learning is extensively evaluated using two scenarios: 1) how the high dimensional geometry is characterized in the subspace and 2) how the reconstruction compares with the original shape dynamics. The results demonstrate and validate the theoretical advantages of the proposed approach.
Keywords :
computational complexity; computational geometry; differential equations; learning (artificial intelligence); Levi-Civita connection; Riemannian geometry; Riemannian metric constraints; computational efficiency; generative modeling approach; initial frame; manifold valued differential equation; nonlinear geometry; novel subspace learning algorithm; parallel moving frame; reconstruction error; shape dynamics; shape manifold; Equations; Geometry; Manifolds; Measurement; Parallel processing; Shape; Vectors; Subspace learning; dimension reduction; shape analysis; shape dynamic analysis;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2358200
Filename :
6898860
Link To Document :
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