egularised LSE variant for the baseline estimation [Whittaker,
nderson, 1924; Taylor, 1992].
Whittaker-Henderson algorithm
ttaker-Henderson algorithm (WH) is a special case of the ridge
ression algorithm (RLR). The main concept and implementation
has been introduced in the last chapter. The error term used in
amed as the fidelity in WH. Suppose a spectrum is expressed as
of n entries, ࢙ൌሺݏଵ, ݏଶ, ⋯, ݏሻ. Each entry of this vector is called
ntensity or simply an intensity. As aforementioned, such an
may not represent a real signal or a peak of a chemical. It is
mixture between a baseline intensity and a signal intensity, i.e.,
݁, where ܾ stands for the baseline intensity contained in the ith
and ݁ stands for the distance between the ith signal intensity ݏ
h baseline intensity ܾ. Such a distance is also called an error. A
atrix expression of this relationship is ܛൌ܊܍, where three sets
are expressed by three vectors. Both b and e are unknown. In
o the fidelity definition, which is ܍ൌܛെ܊, WH defines another
ed the smoothness, which is ݀ൌܾെܾିଵ. A vector d is used to
all the smoothness values. WH has employed an objective
by introducing a regularisation constant ߣ to make a balance
the fidelity (regression error) and the smoothness. The WH
function is defined as below,
ܱൌ܍௧܍ߣ܌௧܌
(5.1)
SE optimisation of this objective function leads to the solution of
wn baseline shown below,
܊ൌሺ۷ ߣ܌௧܌ሻିଵܛ
(5.2)
e 5.1 shows such an example based on a simulated spectrum,
e baseline (b) is expressed by a solid line and the spectrum (s) is
d by a dotted line. It can be seen that if the baseline has been very