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The Discrete-Time Fourier Transform (DTFT) is the primary theoretical tool for understanding the frequency content of a discrete-time (sampled) signal.The DTFT is defined as
The DTFT is very useful for theory and analysis, but is not practical for numerically computing a spectrum digitally, because
For practical computation of the frequency content of real-world signals, the Discrete Fourier Transform (DFT) is used.
The DFT transforms samples of a discrete-time signal to the same number of discrete frequency samples, and is defined as
The DFT gives the discrete-time Fourierseries coefficients of a periodic sequence ( ) of period samples, or
The DFT can thus be used to exactly compute the relative values of the line spectral components of the DTFT of any periodic discrete-time sequence with an integer-length period.
When a discrete-time sequence happens to equal zero for all samples except for those between and , the infinite sum in the DTFT equation becomes the same as the finite sum from to in the DFT equation. By matching the arguments in the exponential terms, we observe that theDFT values exactly equal the DTFT for specific DTFT frequencies . That is, the DFT computes exact samples of the DTFT at equally spaced frequencies , or
In most cases, the signal is neither exactly periodic nor truly of finite length; in such cases, the DFT of a finite block of consecutive discrete-time samples does not exactly equal samples of the DTFT at specific frequencies. Instead, the DFT gives frequency samples of a windowed (truncated) DTFT where Once again, exactly equals a DTFT frequency sample only when
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