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Contents
Introduction to Digital Signal Processing
Analog Signal Processing Versus Digital Signal
Processing
Classification Of Signals
Comparison Between Continuous-Time & Discrete-Time
Sinusoids
Characteristics Of Discrete-time Sinusoids
A/D and D/A Conversion
Signal
A signal is any physical quantity that varies with time, space or any
other independent variable or variables.
Real-valued, Complex valued, multichannel, multi-diemnsional
Processing
Performing certain operations on a signal to extract some useful
information
Digital
The word digital in digital signal processing means that the
processing is done either by a digital hardware or by a digital
computer.
Digital Signal Processing is performing signal processing using digital
techniques with the aid of digital hardware and/or some kind of
computing device.
Digital Signal Processor is a digital computer or processor that is
designed especially for signal processing applications.
Accuracy limitations due to
 Component tolerances
 Undesired nonlinearities
Limited repeatability due to
 Tolerances
 Changes in environmental conditions
 Temperature
 Vibration
Sensitivity to electrical noise
Limited dynamic range for voltage and currents
Inflexibility to changes
Difficulty of storing information
Accuracy can be controlled by choosing word length
Repeatable
Sensitivity to electrical noise is minimal
Dynamic range can be controlled using floating point numbers
Flexibility can be achieved with software implementations
Digital storage is cheap
Digital information can be encrypted for security
Limitations of Digital Signal Processing
 Sampling causes loss of information
 A/D and D/A requires mixed-signal hardware
 Limited speed of processors
 Quantization and round-off errors
Signal
Continuous
Time
Signal
Discrete
Time Signal
Continuous
Valued
Signal
Discrete
Valued
Signal
Continuous-Time Signal
Function of time
Finite or Infinite values
Discrete-Time Signal
Function of n (number of samples)
Finite or Infinite values
Continuous-Valued Signal
Infinite values
Function of time or n
Discrete-Valued Signal
Finite values
Function of time or n
Continuous-Time Signals (Analog signal) are defined for every value
of time. It is represented as a function of time.
Where as
Discrete-Time Signals are defined only at certain specific values of
time. It is represented as a function of n (number of samples).
Comparison Between Continuous
Time and Discrete Time Signal
Continuous Time
x(t) = A cos(Ωt +θ ) , - ∞ < t < ∞
Ω = 2π F -∞ < F < ∞
Where
A= Amplitude
Ω = Frequency (radian/ second)
θ=Phase
F=cycles/second
Discrete Time
x (n) = A cos(ω n+ θ) - ∞ < n< ∞
ω =2π f -π ≤ ω ≤ π
Where
A = Amplitude
ω = Frequency (radian/sample)
θ = Phase
f = cycles/sample
1. A Discrete-time sinusoid is periodic if its frequency f is a rational
number.
2. Discrete-time sinusoids whose frequencies are separated by an integer
multiple of 2π are identical.
3. The highest rate of oscillation in a discrete-time sinusoid is attained
when ω = π ( or ω = -π) or, equivalently f=1/2 (or f= -1/2).
A Discrete-time sinusoid is periodic if its frequency f is a
rational number.
Discrete-time sinusoids whose frequencies are separated by
an integer multiple of 2π are identical.
Consider the sinusoid
It follows
Where
are indistinguishable(i.e. identical).
The sinusoids having the frequency | 𝝎|> 𝝅 are the alias of the
corresponding sinusoid with frequency | 𝝎|< 𝝅.
The highest rate of oscillation in a discrete-time sinusoid is
attained when ω = π ( or ω = -π) or, equivalently f=1/2 (or f= -1/2).
Example # 1:
x (n) = A cos(ω n+ θ)
Where
ω = π/6 and θ=π/3
f = 1/12 cycles per sample

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Digital System Processing

  • 1.
  • 2. Contents Introduction to Digital Signal Processing Analog Signal Processing Versus Digital Signal Processing Classification Of Signals Comparison Between Continuous-Time & Discrete-Time Sinusoids Characteristics Of Discrete-time Sinusoids A/D and D/A Conversion
  • 3. Signal A signal is any physical quantity that varies with time, space or any other independent variable or variables. Real-valued, Complex valued, multichannel, multi-diemnsional Processing Performing certain operations on a signal to extract some useful information Digital The word digital in digital signal processing means that the processing is done either by a digital hardware or by a digital computer.
  • 4. Digital Signal Processing is performing signal processing using digital techniques with the aid of digital hardware and/or some kind of computing device. Digital Signal Processor is a digital computer or processor that is designed especially for signal processing applications.
  • 5. Accuracy limitations due to  Component tolerances  Undesired nonlinearities Limited repeatability due to  Tolerances  Changes in environmental conditions  Temperature  Vibration Sensitivity to electrical noise Limited dynamic range for voltage and currents Inflexibility to changes Difficulty of storing information
  • 6. Accuracy can be controlled by choosing word length Repeatable Sensitivity to electrical noise is minimal Dynamic range can be controlled using floating point numbers Flexibility can be achieved with software implementations Digital storage is cheap Digital information can be encrypted for security
  • 7. Limitations of Digital Signal Processing  Sampling causes loss of information  A/D and D/A requires mixed-signal hardware  Limited speed of processors  Quantization and round-off errors
  • 9. Continuous-Time Signal Function of time Finite or Infinite values Discrete-Time Signal Function of n (number of samples) Finite or Infinite values Continuous-Valued Signal Infinite values Function of time or n Discrete-Valued Signal Finite values Function of time or n
  • 10. Continuous-Time Signals (Analog signal) are defined for every value of time. It is represented as a function of time. Where as Discrete-Time Signals are defined only at certain specific values of time. It is represented as a function of n (number of samples).
  • 11. Comparison Between Continuous Time and Discrete Time Signal Continuous Time x(t) = A cos(Ωt +θ ) , - ∞ < t < ∞ Ω = 2π F -∞ < F < ∞ Where A= Amplitude Ω = Frequency (radian/ second) θ=Phase F=cycles/second Discrete Time x (n) = A cos(ω n+ θ) - ∞ < n< ∞ ω =2π f -π ≤ ω ≤ π Where A = Amplitude ω = Frequency (radian/sample) θ = Phase f = cycles/sample
  • 12. 1. A Discrete-time sinusoid is periodic if its frequency f is a rational number. 2. Discrete-time sinusoids whose frequencies are separated by an integer multiple of 2π are identical. 3. The highest rate of oscillation in a discrete-time sinusoid is attained when ω = π ( or ω = -π) or, equivalently f=1/2 (or f= -1/2).
  • 13. A Discrete-time sinusoid is periodic if its frequency f is a rational number.
  • 14. Discrete-time sinusoids whose frequencies are separated by an integer multiple of 2π are identical. Consider the sinusoid It follows Where are indistinguishable(i.e. identical). The sinusoids having the frequency | 𝝎|> 𝝅 are the alias of the corresponding sinusoid with frequency | 𝝎|< 𝝅.
  • 15. The highest rate of oscillation in a discrete-time sinusoid is attained when ω = π ( or ω = -π) or, equivalently f=1/2 (or f= -1/2).
  • 16.
  • 17. Example # 1: x (n) = A cos(ω n+ θ) Where ω = π/6 and θ=π/3 f = 1/12 cycles per sample