ECE 8443 – Pattern Recognition ECE 3163 – Signals and Systems Objectives: Derivation Transform Pairs Response of LTI Systems Transforms of Periodic Signals.

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ECE 8443 – Pattern Recognition ECE 3163 – Signals and Systems Objectives: Derivation Transform Pairs Response of LTI Systems Transforms of Periodic Signals Examples Resources: Wiki: The Fourier Transform CNX: Derivation MIT 6.003: Lecture 8 Wikibooks: Fourier Transform Tables RBF: Image Transforms (Advanced) Wiki: The Fourier Transform CNX: Derivation MIT 6.003: Lecture 8 Wikibooks: Fourier Transform Tables RBF: Image Transforms (Advanced) LECTURE 10: THE FOURIER TRANSFORM Audio: URL:

ECE 3163: Lecture 10, Slide 1 Motivation We have introduced a Fourier Series for analyzing periodic signals. What about aperiodic signals? (e.g., a pulse instead of a pulse train) We can view an aperiodic signal as the limit of a periodic signal as T  . The harmonic components are spaced apart. As T  ,  0  0, then k  0 becomes continuous. The Fourier Series becomes the Fourier Transform.

ECE 3163: Lecture 10, Slide 2 Derivation of Analysis Equation Assume x(t) has a finite duration. Define as a periodic extension of x(t): As Recall our Fourier series pair: Since x(t) and are identical over this interval: As

ECE 3163: Lecture 10, Slide 3 Derivation of the Synthesis Equation Recall: We can substitute for c k the sampled value of : As and we arrive at our Fourier Transform pair: Note the presence of the eigenfunction: Also note the symmetry of these equations (e.g., integrals over time and frequency, change in the sign of the exponential, difference in scale factors). (synthesis) (analysis)

ECE 3163: Lecture 10, Slide 4 Frequency Response of a CT LTI System Recall that the impulse response of a CT system, h(t), defines the properties of that system. We apply the Fourier Transform to obtain the system’s frequency response: except that now this is valid for finite duration (energy) signals as well as periodic signals! How does this relate to what you have learned in circuit theory? CT LTI

ECE 3163: Lecture 10, Slide 5 Existence of the Fourier Transform Under what conditions does this transform exist? x(t) can be infinite duration but must satisfy these conditions:

ECE 3163: Lecture 10, Slide 6 Example: Impulse Function

ECE 3163: Lecture 10, Slide 7 Example: Exponential Function

ECE 3163: Lecture 10, Slide 8 Example: Square Pulse

ECE 3163: Lecture 10, Slide 9 Example: Gaussian Pulse

ECE 3163: Lecture 10, Slide 10 CT Fourier Transforms of Periodic Signals

ECE 3163: Lecture 10, Slide 11 Example: Cosine Function

ECE 3163: Lecture 10, Slide 12 Example: Periodic Pulse Train

ECE 3163: Lecture 10, Slide 13 Motivated the derivation of the CT Fourier Transform by starting with the Fourier Series and increasing the period: T   Derived the analysis and synthesis equations (Fourier Transform pairs). Applied the Fourier Transform to CT LTI systems and showed that we can obtain the frequency response of an LTI system by taking the Fourier Transform of its impulse response. Discussed the conditions under which the Fourier Transform exists. Demonstrated that it can be applied to periodic signals and infinite duration signals as well as finite duration signals. Worked several examples of important finite duration signals. Introduced the Fourier Transform of a periodic signal. Applied this to a cosinewave and a pulse train. Summary