Complex Variables & Transforms 232 Presentation No.1 Fourier Series & Transforms Group A Uzair Akbar Hamza Saeed Khan Muhammad Hammad Saad Mahmood Asim.

Slides:



Advertisements
Similar presentations
The imaging problem object imaging optics (lenses, etc.) image
Advertisements

DCSP-14 Jianfeng Feng Department of Computer Science Warwick Univ., UK
Computer Vision Lecture 7: The Fourier Transform
Ch 3 Analysis and Transmission of Signals
ECE 8443 – Pattern Recognition EE 3512 – Signals: Continuous and Discrete Objectives: Response to a Sinusoidal Input Frequency Analysis of an RC Circuit.
Lecture 7: Basis Functions & Fourier Series
Leo Lam © Signals and Systems EE235. Transformers Leo Lam ©
SIMS-201 Characteristics of Audio Signals Sampling of Audio Signals Introduction to Audio Information.
Review of Frequency Domain
Properties of continuous Fourier Transforms
EE-2027 SaS 06-07, L11 1/12 Lecture 11: Fourier Transform Properties and Examples 3. Basis functions (3 lectures): Concept of basis function. Fourier series.
Autumn Analog and Digital Communications Autumn
Lecture 9: Fourier Transform Properties and Examples
Lecture 3 Data Encoding and Signal Modulation
Continuous-Time Fourier Methods
Discrete-Time Convolution Linear Systems and Signals Lecture 8 Spring 2008.
CELLULAR COMMUNICATIONS DSP Intro. Signals: quantization and sampling.
Leo Lam © Signals and Systems EE235. Leo Lam © Fourier Transform Q: What did the Fourier transform of the arbitrary signal say to.
Computational Geophysics and Data Analysis
Chapter 25 Nonsinusoidal Waveforms. 2 Waveforms Used in electronics except for sinusoidal Any periodic waveform may be expressed as –Sum of a series of.
Digital Signals and Systems
Discrete-Time and System (A Review)
1 Signals & Systems Spring 2009 Week 3 Instructor: Mariam Shafqat UET Taxila.
Lecture 1 Signals in the Time and Frequency Domains
Chapter 2: Discrete time signals and systems
ECE 8443 – Pattern Recognition EE 3512 – Signals: Continuous and Discrete Objectives: Linearity Time Shift and Time Reversal Multiplication Integration.
Digital Signal Processing
Digital Image Processing Chapter # 4 Image Enhancement in Frequency Domain Digital Image Processing Chapter # 4 Image Enhancement in Frequency Domain.
CISE315 SaS, L171/16 Lecture 8: Basis Functions & Fourier Series 3. Basis functions: Concept of basis function. Fourier series representation of time functions.
(Lecture #08)1 Digital Signal Processing Lecture# 8 Chapter 5.
Module 2 SPECTRAL ANALYSIS OF COMMUNICATION SIGNAL.
Lecture 24: CT Fourier Transform
CHAPTER 4 Laplace Transform.
Fourier Series. Introduction Decompose a periodic input signal into primitive periodic components. A periodic sequence T2T3T t f(t)f(t)
CHAPTER 4 Laplace Transform.
Lecture 1B (01/07) Signal Modulation
Signals CY2G2/SE2A2 Information Theory and Signals Aims: To discuss further concepts in information theory and to introduce signal theory. Outcomes:
1 Fourier Representations of Signals & Linear Time-Invariant Systems Chapter 3.
Fundamentals of Electric Circuits Chapter 18 Copyright © The McGraw-Hill Companies, Inc. Permission required for reproduction or display.
Lecture 7: Sampling Review of 2D Fourier Theory We view f(x,y) as a linear combination of complex exponentials that represent plane waves. F(u,v) describes.
Signals and Systems Dr. Mohamed Bingabr University of Central Oklahoma
October 29, 2013Computer Vision Lecture 13: Fourier Transform II 1 The Fourier Transform In the previous lecture, we discussed the Hough transform. There.
Course Outline (Tentative) Fundamental Concepts of Signals and Systems Signals Systems Linear Time-Invariant (LTI) Systems Convolution integral and sum.
1 Lecture 1: February 20, 2007 Topic: 1. Discrete-Time Signals and Systems.
Chapter 2. Signals and Linear Systems
Fourier Analysis of Signals and Systems
Lecture 3: The Sampling Process and Aliasing 1. Introduction A digital or sampled-data control system operates on discrete- time rather than continuous-time.
Topics 1 Specific topics to be covered are: Discrete-time signals Z-transforms Sampling and reconstruction Aliasing and anti-aliasing filters Sampled-data.
2D Fourier Transform.
Auditory Perception: 2: Linear Systems. Signals en Systems: To understand why the auditory system represents sounds in the way it does, we need to cover.
Eeng360 1 Chapter 2 Linear Systems Topics:  Review of Linear Systems Linear Time-Invariant Systems Impulse Response Transfer Functions Distortionless.
Chapter 2. Signals and Linear Systems
ENEE 322: Continuous-Time Fourier Transform (Chapter 4)
The Frequency Domain Digital Image Processing – Chapter 8.
Radio Equipment. Review: On the Transmitter Side The purpose of radio communications is to transfer information from one point to another. The information.
Frequency Domain Representation of Biomedical Signals.
Math for CS Fourier Transforms
Review of DSP.
Digital Image Processing Lecture 8: Fourier Transform Prof. Charlene Tsai.
Lecture 7: Basis Functions & Fourier Series
Signals & systems Ch.3 Fourier Transform of Signals and LTI System
ECE3340 Review of Numerical Methods for Fourier and Laplace Transform Applications – Part 1 Fourier Spring 2016 Prof. Han Q. Le Note: PPT file is the.
UNIT-III Signal Transmission through Linear Systems
Chapter 2. Signals and Linear Systems
Review of DSP.
UNIT II Analysis of Continuous Time signal
Fundamentals of Electric Circuits Chapter 18
LECTURE 18: FOURIER ANALYSIS OF CT SYSTEMS
Lesson Week 8 Fourier Transform of Time Functions (DC Signal, Periodic Signals, and Pulsed Cosine)
Presentation transcript:

Complex Variables & Transforms 232 Presentation No.1 Fourier Series & Transforms Group A Uzair Akbar Hamza Saeed Khan Muhammad Hammad Saad Mahmood Asim Javed Sumbul Bashir Mona Ali Zaib Maria Aftab Hafiz Muhammad Abdullah Bin Ashfaq Behlol Nawaz Bee-5A

Fourier Series and Transforms MATH 232 PRESENTATION

Contents Fourier Series & Transforms in Signals & Systems: Introduction Impulse Response LTI Systems Convolution Integral Applications of Fourier Series & Transforms: Finding Time Domain Output from Impulse Response Radar System Modulation Digital Recording Image Compression & Analysis

Fourier Series & Transforms in Signals & Systems MATH 232 PRESENTATION

Introduction Fourier series representation can be used to construct any periodic signal in discrete time and essentially all periodic continuous-time signals of practical importance The response of an LTI system to a complex exponential signal is particularly simple to express in terms of the frequency response of the system. Furthermore, as a result of the superposition property for LTI systems, we can express the response of an LTI system to a linear combination of complex exponentials with equal ease.

Impulse Response The impulse response describes the reaction of the system as a function of time. Impulse function contains all frequencies. The impulse response defines the response of a linear time-invariant system for all frequencies. Depends on whether the system is modeled in discrete or continuous time. Modeled as a Dirac delta function for continuous-time systems. The Dirac delta represents the limiting case of a pulse made very short in time while maintaining its area or integral. In Fourier analysis theory, such an impulse comprises equal portions of all possible excitation frequencies.

LTI Systems Any LTI system can be characterized in the frequency Linearity means that the relationship between the input and the output of the system is a linear map. Time invariance means that whether we apply an input to the system now or T seconds from now, the output will be identical except for a time delay of the T seconds. LTI system can be characterized entirely by a single function called the system's impulse response. The output of the system is simply the convolution of the input to the system with the system's impulse response. domain by the system's transfer function, which is the Laplace transform of the system's impulse response. The output of the system in the frequency domain is the product of the transfer function and the transform of the input.

Convolution Integral

Applications of Fourier Series & Transforms MATH 232 PRESENTATION

Finding Time Domain Output from Impulse Response Knowing the impulse response of a system, we can find the transfer function; the Fourier transform of the impulse response. And since all possible input signals are just the sum of sinusoids, we can easily find the output of an LTI system due to any input signal.

Filtering In signal processing, a filter is a device or process that removes from a signal some unwanted component or feature. Filtering is a class of signal processing, the defining feature of filters being the complete or partial suppression of some aspect of the signal. Most often, this means removing some frequencies and not others in order to suppress interfering signals and reduce background noise

Radar System The RADAR's receiver has to ensure that the signal it receives back is its own and not background noise. For noise cancellation, the incoming signal is split into component frequencies with the Fourier transform and all the irrelevant bands of frequencies are cut off.

Modulation Once at the receiver gives back the original information signal, the filtering of the original signal also requires its division into its oscillatory components using Fourier series. The process of Amplitude Modulation uses convolution along with Fourier transform. So the information signal is convoluted with a carrier wave; a high frequency cosine wave. This is necessary, because to transmit a radio wave of a certain frequency, an antenna of a particular size and characteristics has to be built.

Digital Recording An incoming audio signal is fed into what is known as an Analogue-to-Digital (A-D) converter. This A-D converter takes a series of measurements of the signal at regular intervals, and stores each one as a number. The resultant long series of numbers is then placed onto some kind of storage medium, from which it can be retrieved. Playback is essentially the same process in reverse: a long series of numbers is retrieved from a storage medium, and passed to what is known as a Digital-to-Analogue (D-A) converter. The D-A converter takes the numbers obtained by measuring the original signal, and uses them to construct a very close approximation of that signal, which can then be passed to a loudspeaker and heard as sound. The generic name for this system is Pulse Code Modulation (PCM). So what an MP3 encoder does is it breaks the PCM signal (amplitudes in time domain) into its contributing frequencies. Then, its algorithm determines which frequencies to cut off and which to retain, based on different factors, some mentioned here. The result is that now lesser information has to be stored. The sound can then be played by a software that can decode MP3.

Image Compression & Analysis Superposition of a lot of these can produce a proper image. Hence, an image can be represented by such Fourier series, and analyzed. However, to describe a complete image, the Fourier series should be in both vertical and horizontal dimensions. An image can be split into sub-components, and those that have very little contribution to the image are cut off. As an example of breaking image into frequencies, lets consider a black and white pictures. The patterns shown can be captured in a single Fouier term that encodes Spatial frequency Magnitude (positive or negative) The phase

Questions?

END