This function calculates an uncorrelated multilinear principal component
analysis (UMPCA) representation for functional data on two-dimensional
domains. In this case, the data can be interpreted as images with S1 x
S2
pixels (assuming nObsPoints(funDataObject) = (S1, S2)
), i.e. the
total observed data are represented as third order tensor of dimension
N x S1 x S2
. The UMPCA of a tensor of this kind is calculated via the
UMPCA function, which is an R
-version of the analogous
functions in the UMPCA
MATLAB toolbox by Haiping Lu (Link:
https://www.mathworks.com/matlabcentral/fileexchange/35432-uncorrelated-multilinear-principal-component-analysis-umpca,
see also references).
umpcaBasis(funDataObject, npc)
A matrix of scores (coefficients) with dimension
N x k
, reflecting the weight of each principal component in each
observation.
A matrix containing the scalar product of all pairs of basis functions.
Logical, set to FALSE
, as basis
functions are not orthonormal.
A functional data object, representing the functional principal component basis functions.
An object of class funData
containing the observed functional data samples (here: images) for which
the UMPCA is to be calculated.
An integer, giving the number of principal components to be calculated.
As this algorithm aims more at uncorrelated features than at an optimal reconstruction of the data, hence it might give poor results when used for the univariate decomposition of images in MFPCA. The function therefore throws a warning.
Haiping Lu, K.N. Plataniotis, and A.N. Venetsanopoulos, "Uncorrelated Multilinear Principal Component Analysis for Unsupervised Multilinear Subspace Learning", IEEE Transactions on Neural Networks, Vol. 20, No. 11, Page: 1820-1836, Nov. 2009.
univDecomp