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17.6:

Discrete-time Fourier transform

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Discrete-time Fourier transform

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The Discrete-Time Fourier Transform is a variant of the Fourier transform applied to a discrete-time signal. This transform replaces the integral in the continuous-time Fourier transform with a summation to handle the discrete nature of the signal. Consider a discrete-time finite-duration sequence. A periodic sequence is formed when N approaches infinity and duplicates this sequence over larger intervals. The Fourier spectrum of the discrete signal has an interesting property of periodicity. This means it can be expanded using a Fourier series. The periodic nature also enables the computation of its inverse, called the Inverse Discrete-Time Fourier Transform (IDFT). The DTFT and the IDTFT form a pair, symbolizing a one-to-one relationship between the discrete signal and its spectrum. The existence or convergence of X(Ω) depends on whether the discrete signal is summable. It's important to note that while the discrete signal is quantized, X(Ω) is a function of a continuous variable, indicating a bridge between the discrete and continuous domains. DTFT is pivotal in designing digital filters in audio/video systems, communication devices, and biomedical applications.

17.6:

Discrete-time Fourier transform

The Discrete-Time Fourier Transform (DTFT) is an essential mathematical tool for analyzing discrete-time signals, converting them from the time domain to the frequency domain. This transformation allows for examining the frequency components of discrete signals, providing insights into their spectral characteristics. In the DTFT, the continuous integral used in the continuous-time Fourier transform is replaced by a summation to accommodate the discrete nature of the signal.

One of the notable properties of the DTFT is its periodicity. The Fourier spectrum X(Ω) is periodic with a period of 2π. This periodicity implies that X(Ω) can be represented as a Fourier series, facilitating various analytical and computational techniques. The periodic nature of the DTFT also enables the computation of its inverse, the Inverse Discrete-Time Fourier Transform (IDTFT), which reconstructs the original discrete-time signal from its frequency spectrum.

Equation1

Here, Ω represents the frequency variable, differentiated from the continuous frequency variable typically denoted by ω. The result, X(Ω), is the Fourier spectrum of the discrete signal. The existence and convergence of X(Ω) depend on the summability of the discrete-time signal x[n]. If x[n] is absolutely summable, then X(Ω) exists and converges.

Despite the discrete nature of the original signal, X(Ω) is a continuous function of the frequency variable Ω, highlighting the DTFT's role as a bridge between discrete and continuous domains. This characteristic is pivotal in various practical applications, particularly in the design and analysis of digital filters used in audio and video processing, communication systems, and biomedical signal processing.

In summary, the DTFT is a foundational tool in signal processing, enabling the analysis and manipulation of discrete-time signals in the frequency domain. Its properties and applications underscore its importance in both theoretical and practical aspects of modern engineering and technology.