2.4 Signal Processing Transformations
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time t/s
time t/s
Fig. 2.23: Morlet wavelet (left) according to Equation 2.80 and Mexican Hat wavelet (right) according
to Equation 2.81.
the complex exponential function. A possible realisation of a Morlet wavelet is e.g. the
function
ψ(t) = e−t2
2 cos(5t) .
(2.80)
Figure 2.23 (left) shows the composition of the Morlet wavelet according to Equa-
tion 2.80 from harmonic oscillation multiplied by a Gaussian envelope function. The
Mexican Hat wavelet (cf. Figure 2.23, right) has the mathematical form
ψ(t) = e−t2
2σ (1 −t2) .
(2.81)
Unlike the Morlet wavelet, the Mexican Hat wavelet does not contain a harmonic func-
tion, which leads to differences in the interpretation of the transformation, as will be
discussed later.
The graphical representation of S(a, τ) is either in a three-dimensional figure with
a and τ as x- and y-axis and S as the z-axis, or a two-dimensional figure in which
a is plotted downward in ascending order over τ. The transformation result is then
rendered as a color or brightness in the two-dimensional (a, τ) plane.
The benefit of the wavelet transform for signal analysis lies in the variable wave-
let width. If, for example, a high time resolution is required because very short signal
events occur in the signal that are to be analysed spectrally, the width of the wave-
let can be reduced by means of the scaling value a so that the required time resolu-
tion is achieved. This narrow wavelet then passes through the entire signal by means
of the displacement parameter τ, yielding high S values whenever the wavelet en-
counters the short signal events. However, if the same signal also contains periodic
events with long period durations, such as may be caused by respiration in biosig-
nals, these are captured in the same signal analysis for large a values. This makes
the wavelet transform particularly well suited for the analysis of signals that are com-