Principal geodesic analysis

Principal geodesic analysis

In geometric data analysis and statistical shape analysis, principal geodesic analysis is a generalization of principal component analysis to a non-Euclidean, non-linear setting of manifolds suitable for use with shape descriptors such as medial representations.

References

* [http://midag.cs.unc.edu/pubs/papers/TMI04_Fletcher_PGA.pdf Principal Geodesic Analysis for the Study of Nonlinear Statistics of Shape]


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