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5 Methods for Discrete Processing and Analysis of Biosignals

Fig. 5.5: Spectrum of the signal FTa(f) sampled with Dirac pulses obtained by periodically repeating

the spectrum of the original signal F(f).

results for the resulting spectrum FT(t) of the rectangular sequence fT(t) after

sampling:²

FT(f) = FTa(f) ⋅F {Arect ( t

T )}

= [ A

Ta

ν=−

F (ft

Ta

)]T si(πfT)

= AT

Ta

si(πfT) ⋅

ν=−

F (ft

Ta

) .

(5.6)

The result for the spectrum of the signal FTa(f) sampled with a Dirac-pulse train is a

periodic repetition of the source signal spectrum F(f) with sampling frequency fa =

1/Ta (cf. Figure 5.5).

However, this only works if the periodic spectrum repetitions do not overlap, as

shown in Figure 5.5. In the case of overlapping spectra, a restoration of the original

analogue signal by a simple low-pass filtering is no longer possible (cf. e.g. Figure 5.6).

For a recovery it is namely necessary that the upper cut-off frequency of the analogue

signal is smaller than half the sampling frequency:

fg < fa

2 ,

Shannon sampling theorem.

(5.7)

The spectrum of the analogue signal, and thus the signal itself, can be reconstructed

from the spectrum of the sampled signal using a low-pass filter, which filters out only

the spectrum component around the frequency zero point. The associated interpola-

tion function between the samples is thus generated by the impulse response of the

low-pass filter (see Figure 5.7).

This type can also be interpreted as ideal sampling with Dirac pulses. However, ac-

cording to Equation 5.6, the signal sampled not ideally but with square wave functions

2 si(x) := sin(x)

x