2.4 Signal Processing Transformations

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41

time t/s

Fig. 2.22: Window functions for the short-time Fourier transform (STFT): The window width corres-

ponds to the time resolutiont of the STFT,t can be varied via the parameterisation in the func-

tional description of the window functions.

time information, i.e. no information about which part of the spectrum originates from

which time section of the signal. In order to determine the spectrum of a signal at least

in sections, the short-time Fourier transform (STFT) is available. For this purpose, the

signal is multiplied by a window function w(t), which sets all signal components out

of the window function to zero. With the signal "windowed" in this way, the Fourier

transform yields only the spectrum of the section that lies in the window. Then the

window is shifted and the spectrum of the next section is calculated. The window

width is freely selectable and corresponds to the time resolutiont of the STFT. Com-

monly used window functions are known as Hamming, Hanning, Blackman-Harris or

Gaussian windows (see Figure 2.22).

An important property of such windows is that the signal is gently guided towards

zero at the edges of the window. Otherwise, jumps could occur at the edges, which

would result in an infinitely extended spectrum. Therefore, the square wave function

is usually ruled out as a window function. Limiting the time resolution tot, accord-

ing to the uncertainty principle of communications engineering¹⁶, a limited frequency

resolution results, since the product of time and frequency resolution cannot fall be-

low a certain value. A frequently chosen definition of bandwidth and signal duration

leads to the uncertainty condition

tf = 1 .

(2.73)

Accordingly, frequency and time accuracy cannot be high for the same windows para-

meters. If a high time resolution is required, i.e.t is small, the frequency resolution

16 The uncertainty principle of communications engineering was formulated by Karl Küpfmüller

(1897 - 1977).