An efficient Exact-PGA algorithm for constant curvature manifolds
Rudrasis Chakraborty, Dohyung Seo, Baba C. Vemuri

TL;DR
This paper introduces CCM-EPGA, an efficient exact principal geodesic analysis algorithm for constant curvature manifolds, which improves computational efficiency and accuracy over existing methods by analytical distance computation and optimization-free descent.
Contribution
The paper proposes CCM-EPGA, a novel algorithm that analytically computes distances and avoids optimization in principal geodesic analysis on constant curvature manifolds.
Findings
CCM-EPGA outperforms existing PGA algorithms in efficiency and accuracy.
The method enables data reconstruction from principal components.
Experimental results validate the theoretical advantages of CCM-EPGA.
Abstract
Manifold-valued datasets are widely encountered in many computer vision tasks. A non-linear analog of the PCA, called the Principal Geodesic Analysis (PGA) suited for data lying on Riemannian manifolds was reported in literature a decade ago. Since the objective function in PGA is highly non-linear and hard to solve efficiently in general, researchers have proposed a linear approximation. Though this linear approximation is easy to compute, it lacks accuracy especially when the data exhibits a large variance. Recently, an alternative called exact PGA was proposed which tries to solve the optimization without any linearization. For general Riemannian manifolds, though it gives better accuracy than the original (linearized) PGA, for data that exhibit large variance, the optimization is not computationally efficient. In this paper, we propose an efficient exact PGA for constant curvature…
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Videos
An Efficient Exact-PGA Algorithm for Constant Curvature Manifolds· youtube
Taxonomy
TopicsAdvanced Image Fusion Techniques · Automated Road and Building Extraction · Advanced Vision and Imaging
MethodsPrincipal Components Analysis
