A discrete-time signal is represented symbolically as
| Discrete-Time Cosine Signal |
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Summary: Signals can be represented by discrete quantities instead of as a function of a continuous variable. These discrete time signals do not necessarily have to take real number values. Many properties of continuous valued signals transfer almost directly to the discrete domain.
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So far, we have treated what are known as analog signals and systems. Mathematically, analog signals are functions having continuous quantities as their independent variables, such as space and time. Discrete-time signals are functions defined on the integers; they are sequences. One of the fundamental results of signal theory will detail conditions under which an analog signal can be converted into a discrete-time one and retrieved without error. This result is important because discrete-time signals can be manipulated by systems instantiated as computer programs. Subsequent modules describe how virtually all analog signal processing can be performed with software.
As important as such results are, discrete-time signals are more general, encompassing signals derived from analog ones and signals that aren't. For example, the characters forming a text file form a sequence, which is also a discrete-time signal. We must deal with such symbolic valued signals and systems as well.
As with analog signals, we seek ways of decomposing real-valued discrete-time signals into simpler components. With this approach leading to a better understanding of signal structure, we can exploit that structure to represent information (create ways of representing information with signals) and to extract information (retrieve the information thus represented). For symbolic-valued signals, the approach is different: We develop a common representation of all symbolic-valued signals so that we can embody the information they contain in a unified way. From an information representation perspective, the most important issue becomes, for both real-valued and symbolic-valued signals, efficiency; What is the most parsimonious and compact way to represent information so that it can be extracted later.
A discrete-time signal is represented symbolically as
| Discrete-Time Cosine Signal |
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The most important signal is, of course, the complex exponential sequence.
Discrete-time sinusoids have the obvious form
The second-most important discrete-time signal is the unit sample, which is defined to be
| Unit Sample |
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Examination of a discrete-time signal's plot, like that of the
cosine signal shown in Figure 1,
reveals that all signals consist of a sequence of delayed and
scaled unit samples. Because the value of a sequence at each
integer
Discrete-time systems can act on discrete-time signals in ways similar to those found in analog signals and systems. Because of the role of software in discrete-time systems, many more different systems can be envisioned and “constructed” with programs than can be with analog signals. In fact, a special class of analog signals can be converted into discrete-time signals, processed with software, and converted back into an analog signal, all without the incursion of error. For such signals, systems can be easily produced in software, with equivalent analog realizations difficult, if not impossible, to design.
Another interesting aspect of discrete-time signals is that
their values do not need to be real numbers. We do have
real-valued discrete-time signals like the sinusoid, but we
also have signals that denote the sequence of characters typed
on the keyboard. Such characters certainly aren't real
numbers, and as a collection of possible signal values, they
have little mathematical structure other than that they are
members of a set. More formally, each element of the
symbolic-valued signal