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Signals & Systems Spring 2009 Instructor: Mariam Shafqat UET Taxila. Today's lecture. The course Course contents Recommended books Course structure Assessments breakdown Before we start… Introduction to signals and systems. The Course. Core course
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Signals & Systems Spring 2009 Instructor: Mariam Shafqat UET Taxila
Today's lecture • The course • Course contents • Recommended books • Course structure • Assessments breakdown • Before we start… • Introduction to signals and systems
The Course • Core course • First course in Computer Engineering • A strong foundation for advanced courses and research • What the course is about • Analysis and processing of information • System design for required processing • Mathematical & theoretical • Calculus, Linear Algebra, Differential • Expectations • Extensive and tough
Labs Session • Performance criteria: • Performance within the lab • Lab report • Lab report submission after one week • Lab report submission only in the lab • Viva from each individual student from his/her lab report • Announcement of marks obtained by each individual students in the lab at the end of lab session.
Course contents • Introduction to Signals and Systems • Sinusoids • Spectrum Representation • Analysis of Periodic Waveforms • Sampling and Aliasing • Z-Transform • Convolution • Frequency response • Fourier Series and Transforms • Continuous-time & Discrete-time Systems
Books Signals & Systems (Second Edition) Text Book by Alan V. Oppenheim, Alan S. Willsky, S. Hamid Nawab Signal Processing First Reference Book by James H. McClellan, Ronald W. Schafer, Mark A. Yoder
Assessments Quizzes 10% Assignments 10% Mid Term 20% Labs 16% Final Exam 40% Attendence 4%
Signal • What is a signal • A description of how one parameter is related to another parameter. • Examples • The voltage varies with time v t
Signal • The Speech Signal • The ECG Signal
Signal • The image
Signal • The image
Signal • It is the variation pattern that conveys the information, in a signal • Signal may exist in many forms like acoustic, image, video, electrical, heat & light signal
System • An entity that responds to a signal • Examples • Circuit system input output
System • The camera • The Speech Recognition System Image Identified
System • The audio CD-player • Block Diagram representation of a system • Visual representation of a system • Shows inter-relations of many signals involved in the implementation of a complex system system Output Signal Input Signal
Mathematical Representation • A signal can be represented as a function of one or more independent variables • Examples t
Mathematical Representation • The image is a function of two spatial variables
Continuous-Time Signals • Most signals in the real world are continuous time, as the scale is infinitesimally fine. • E.g. voltage, velocity, • Denote by x(t), where the time interval may be bounded (finite) or infinite
Continuous-time signals • A value of signal exists at every instant of time Independent variable Independent variable
Discrete-Time Signals • Some real world and many digital signals are discrete time, as they are sampled • E.g. pixels, daily stock price (anything that a digital computer processes) • Denote by x[n], where n is an integer value that varies discretely.
Discrete-time signals • The value of signal exists only at equally spaced discrete points in time Independent variable Independent variable
Discrete-time signals • Why to discretize • How to discretize • How closely spaced are the samples • Distinction between discrete & digital signals • How to denote discrete signals • Is the image a discrete or continuous signal • The image is generally considered to be a continuous variable • Sampling can however be used to obtain a discrete, two dimensional signal (sampled image)
Analog vs Digital signals • the difference is with respect to the value of the function (y-axis). • Analog corresponds to a continuous y-axis, while digital corresponds to a discrete y-axis.
Notation • A continuous-time signal is represented by enclosing the independent variable (time) in parentheses () • A discrete-time signal is represented by enclosing the independent variable (index) in square brackets []
Important Parameters • Signal power • Signal energy
Continuous time Signal power • Our usual notion of the energy of a signal is the area under the curve f(t)2.
Periodic vs Aperiodic signals • Periodic signals repeat with some period T, while aperiodic, or nonperiodic, signals do not. • We can define a periodic function through the following mathematical expression, where t can be any number and T is a positive constant: • f (t) = f (T + t) • The fundamental period of our function, f (t), is the smallest value of T that the still allows equation to be true.
Causal vs. Anticausal vs. Noncausal • Causal signals are signals that are zero for all negative time, • Anticausal are signals that are zero for all positive time. • Noncausal signals are signals that have nonzero values in both positive and negative time
Even vs. Odd • An even signal is any signal f such that f (t) = f (-t) • Even signals can be easily plotted as they are vertical about the vertical axis. • An odd signal is a signal such that f(t)=-f(t).
Deterministic vs. Random • Deterministic signal is a signal in which each value of the signal is fixed and can be determined by a mathematical expression, rule, or table. Because of this the future values of the signal can be calculated from past values with complete confidence. • Random signal has a lot of uncertainty about its behavior. The future values of a random signal cannot be accurately predicted and can usually only be guessed based on the averages of sets of signals
Finite vs. Infinite Length • f (t) is a finite-length signal if it is nonzero over a finite interval • t1 < f (t) < t2 • Infinite-length signal, f (t), is defined as nonzero over all real numbers:
Signal Operations/Transformations • Signal operations are operations on the time variable of the signal. • Two signal operations are considered • Time shifting/Time reversal • Time scaling
Time Shifting • Time shifting is, the shifting of a signal in time. This is done by adding or subtracting the amount of the shift to the time variable in the function. Subtracting a fixed amount from the time variable will shift the signal to the right (delay) that amount, while adding to the time variable will shift the signal to the left (advance). • Delay x(t-2) • Advance x(t+2)
Sinusoidal signals • x(t) = A cos(ωt + Φ) • A is the maximum amplitude of the sinusoidal signal • ω is the radian frequency • is the phase shift
Continuous time unit step Discontinuous at time t=0
Relation b/w unit step and unit impulse Running integral for t<0 and t>0