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Recall from [link] that the convolution integral

y ( t ) = - x ( τ ) h ( t - τ ) d τ

has the Fourier Transform:

Y ( j Ω ) = H ( j Ω ) X ( j Ω )

where H ( j Ω ) and X ( j Ω ) are the Fourier Transforms of h ( t ) and x ( t ) , respectively. Solving for H ( j Ω ) gives the frequency response :

H ( j Ω ) = Y ( j Ω ) X ( j Ω )

The frequency response, the Fourier Transform of the impulse response of a filter, is useful since it gives a highly descriptive representation of the properties of the filter. The frequency response can be considered to be the gain of the filter, expressed as a function of frequency. The magnitude of the frequency response evaluated at Ω = Ω 0 , | H ( j Ω 0 ) | gives the factor the frequency component of x ( t ) at Ω = Ω 0 would be scaled by. The phase of the frequency response at Ω = Ω 0 , H ( j Ω 0 ) gives the phase shift the component of x ( t ) at Ω = Ω 0 would undergo. This idea will be discussed in greater detail in [link] . A lowpass filter is a filter which only passes low frequencies, while attenuating or filtering out higher frequencies. A highpass filter would do just the opposite, it would filter out low frequencies and allow high frequencies to pass. [link] shows examples of these various filter types.

Different filter types: (a) lowpass, (b) bandpass, (c) highpass.

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Source:  OpenStax, Signals, systems, and society. OpenStax CNX. Oct 07, 2012 Download for free at http://cnx.org/content/col10965/1.15
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