F. Hermansen et Aa. Lammertsma, LINEAR DIMENSION REDUCTION OF SEQUENCES OF MEDICAL IMAGES .1. OPTIMALINNER PRODUCTS, Physics in medicine and biology, 40(11), 1995, pp. 1909-1920
A general theory is presented for minimizing noise in linear dimension
reduction of sequences of medical images when the factors and the cov
ariance matrix and mean of the noise are given. A dimension reduction
is optimal when all diagonal elements in the covariance matrix of the
noise in the signal (factor) space are minimized. This occurs when the
noise in the signal space is uncorrelated with the residual noise. Ex
pressions are given for the resulting covariance matrix of the noise i
n the signal space. Many optimal inner products exist, which all resul
t in the same optimal dimension reduction. Given any pair of inner pro
ducts for signal space and residual space, a combined inner product ex
ists that is also optimal. If the covariance matrices of the noise in
different pixel vectors are not multiples of each other, different pix
el vectors may have different optimal inner products. The averaging pr
ocess in generating images from tomographic projections tends to make
the covariance matrices more uniform.