SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF COMPUTING DEPARTMENT OF CSE COURSE PLAN

Similar documents
FACULTY OF ENGINEERING AND TECHNOLOGY

SRI VENKATESWARA COLLEGE OF ENGINEERING. COURSE DELIVERY PLAN - THEORY Page 1 of 6

Teaching Scheme. Credits Assigned (hrs/week) Theory Practical Tutorial Theory Oral & Tutorial Total

SYLLABUS CHAPTER - 2 : INTENSITY TRANSFORMATIONS. Some Basic Intensity Transformation Functions, Histogram Processing.

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND COMMUNICATION ENGINEERING DEPARTMENT OF ECE COURSE PLAN

Digital Image Processing

Anna University, Chennai B.E./B.TECH DEGREE EXAMINATION, MAY/JUNE 2013 Seventh Semester

INSTITUTE OF AERONAUTICAL ENGINEERING Dundigal, Hyderabad

1. (a) Explain the process of Image acquisition. (b) Discuss different elements used in digital image processing system. [8+8]

Lecture # 01. Introduction

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY

Syllabus of the course Methods for Image Processing a.y. 2016/17

Digital Image Processing

Digital Image Processing Question Bank UNIT -I

PRACTICAL IMAGE AND VIDEO PROCESSING USING MATLAB

CSE 166: Image Processing. Overview. What is an image? Representing an image. What is image processing? History. Today

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND ELECTRICAL ENGINEERING DEPARTMENT OF ECE COURSE PLAN

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY DEPARTMENT OF TCE COURSE PLAN. Tech Park 13 th floor

: DIGITAL COMMUNICATION

ELE 882: Introduction to Digital Image Processing (DIP)

Digital Image Processing 3 rd Edition. Rafael C.Gonzalez, Richard E.Woods Prentice Hall, 2008

Images with (a) coding redundancy; (b) spatial redundancy; (c) irrelevant information

15EI403J- IMAGE PROCESSING LAB MANUAL

Digital Image Processing. Lecture # 3 Image Enhancement

To understand the different kind of losses, signal distortion in optical wave guides and other signal degradation factors X X X X

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRICAL AND ELECTRONICS ENGINEERING DEPARTMENT OF ECE COURSE PLAN

Noise and Restoration of Images

Digital Image Processing

TDI2131 Digital Image Processing

Image acquisition. Midterm Review. Digitization, line of image. Digitization, whole image. Geometric transformations. Interpolation 10/26/2016

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND ELECTRICAL ENGINEERING DEPARTMENT OF ECE COURSE PLAN

EC0206 LINEAR INTEGRATED CIRCUITS

Enhancement. Degradation model H and noise must be known/predicted first before restoration. Noise model Degradation Model

Solution for Image & Video Processing

SECTION I - CHAPTER 2 DIGITAL IMAGING PROCESSING CONCEPTS

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND ELECTRICAL ENGINEERING DEPARTMENT OF EEE

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF BIO ENGINEERING DEPARTMENT OF BME LESSON PLAN

Compression and Image Formats

APPLIED ELECTRONIC CIRCUITS

Table of contents. Vision industrielle 2002/2003. Local and semi-local smoothing. Linear noise filtering: example. Convolution: introduction

Digital Image Processing 3/e

DIGITAL IMAGE PROCESSING

IMAGE PROCESSING PAPER PRESENTATION ON IMAGE PROCESSING

Introduction. Ioannis Rekleitis

Midterm Review. Image Processing CSE 166 Lecture 10

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND ELECTRICAL ENGINEERING DEPARTMENT OF EEE. Section

DIGITAL IMAGE PROCESSING (COM-3371) Week 2 - January 14, 2002

A Novel Approach of Compressing Images and Assessment on Quality with Scaling Factor

Academic Course Description. VL2107 CMOS Mixed Signal Circuit Design Third Semester, (Odd semester)

Academic Course Description

Digital Image Processing

CS/ECE 545 (Digital Image Processing) Midterm Review

Image Compression Technique Using Different Wavelet Function

COURSE SCHEDULE SECTION. A (Room No: TP 301) B (Room No: TP 302) Hours Timings Hours Timings. Name of the staff Sec Office Office Hours Mail ID

Academic Course Description. CO2110 OFDM/OFDMA COMMUNICATIONS Third Semester, (Odd semester)

GAUSSIAN DE-NOSING TECHNIQUES IN SPATIAL DOMAIN FOR GRAY SCALE MEDICAL IMAGES Nora Youssef, Abeer M.Mahmoud, El-Sayed M.El-Horbaty

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF ELECTRONICS AND ELECTRICAL ENGINEERING DEPARTMENT OF ECE COURSE PLAN

Session 1. by Shahid Farid

Prof. Vidya Manian Dept. of Electrical and Comptuer Engineering

Compression. Encryption. Decryption. Decompression. Presentation of Information to client site

A SURVEY ON DICOM IMAGE COMPRESSION AND DECOMPRESSION TECHNIQUES

Academic Course Description. BEC702 Digital CMOS VLSI

SUPER RESOLUTION INTRODUCTION

MATLAB: Basics to Advanced

Algorithm for Image Processing Using Improved Median Filter and Comparison of Mean, Median and Improved Median Filter

Academic Course Description. VL2004 CMOS Analog VLSI Second Semester, (Even semester)

Improving Signal- to- noise Ratio in Remotely Sensed Imagery Using an Invertible Blur Technique

2.1. General Purpose Run Length Encoding Relative Encoding Tokanization or Pattern Substitution

Digital Image Processing. Lecture 1 (Introduction) Bu-Ali Sina University Computer Engineering Dep. Fall 2011

What is image enhancement? Point operation

Quality Measure of Multicamera Image for Geometric Distortion

Image Smoothening and Sharpening using Frequency Domain Filtering Technique

A.V.C. COLLEGE OF ENGINEERING DEPARTEMENT OF CSE CP7004- IMAGE PROCESSING AND ANALYSIS UNIT 1- QUESTION BANK

L T P C EC0013 RADAR & NAVIGATIONAL AIDS Prerequisite :EC To become familiar with fundamentals of RADAR. operations X X X X X X X

ECE/OPTI533 Digital Image Processing class notes 288 Dr. Robert A. Schowengerdt 2003

Image restoration and color image processing

EC-433 Digital Image Processing

Academic Course Description

Segmentation of Microscopic Bone Images

Signal segmentation and waveform characterization. Biosignal processing, S Autumn 2012

2/24/2012. Image processing and analysis circle. Anatomy Skills Image processing fundamentals. Definitions

TDI2131 Digital Image Processing

CSCE 763: Digital Image Processing

ANALYSIS OF IMAGE ENHANCEMENT TECHNIQUES USING MATLAB

Templates and Image Pyramids

ECE Digital Signal Processing

Implementation of Image Restoration Techniques in MATLAB

MULTIMEDIA SYSTEMS

Image Enhancement. DD2423 Image Analysis and Computer Vision. Computational Vision and Active Perception School of Computer Science and Communication

IMAGE ENHANCEMENT IN SPATIAL DOMAIN

GUJARAT TECHNOLOGICAL UNIVERSITY

DIGITAL IMAGE DE-NOISING FILTERS A COMPREHENSIVE STUDY

Last Lecture. Lecture 2, Point Processing GW , & , Ida-Maria Which image is wich channel?

Academic Course Description

Chapter 17. Shape-Based Operations

Level-Successive Encoding for Digital Photography

IMAGE ENHANCEMENT - POINT PROCESSING

2. REVIEW OF LITERATURE

Fourier Transform. Any signal can be expressed as a linear combination of a bunch of sine gratings of different frequency Amplitude Phase

Digital Image Processing ECE 178 Winter 2003

Transcription:

SRM UNIVERSITY FACULTY OF ENGINEERING AND TECHNOLOGY SCHOOL OF COMPUTING DEPARTMENT OF CSE COURSE PLAN Course Code : CS0323 Course Title : Digital Image Processing Semester : V Course Time : July Dec 2011 DAY 1 SECTION A B C D E Hour Timing Hour Timing Hour Timing Hour Timing Hour Timing 2 3 1 8.45-9.35 1 8.45-9.35 1 8.45-9.35 1 8.45-9.35 1 8.45-9.35 4 5 1.30-2.20 5 1.30-2.20 5 1.30-2.20 5 1.30-2.20 5 1.30-2.20 5 Location : S.R.M.E.C Tech Park Faculty Details SEC NAME OFFICE OFFICE HOUR MAIL ID A,B,C,D,E Dr. D. Malathi Tech Park 8 th Floor Mon - Fri malathid@ktr.srmuniv.ac.in REQUIRED TEXT BOOKS 1. Rafael C. Gonzalez, Richard E. Woods, "Digital Image Processing", 2nd edition, Pearson Education, 2007 REFERENCE BOOKS 2. S.Annadurai, R.Shanmugalakshmi, "fundamentals of Digital Image Processing", Pearson Education, 2007 3. Anil Jain K. "Fundamentals of Digital Image Processing", PHI, 1999 4. William Pratt, "Digital Image Processing", Wiley Interscience, 2nd edition 1991 Web resources http://eeweb.poly.edu/~onur/lectures/lectures.html www.caen.uiowa.edu/~dip/lecture/lecture.html

Prerequisite : MA02011 Objectives: In this course, students will learn the following topics: Image fundamentals and techniques To learn various Image enhancement, restoration and compression techniques To learn various Image segmentation, representation and description methods Assessment Details Cycle Test I : 10 Marks Cycle Test II : 10 Marks Model Examination : 20 Marks Surprise Test : 05 Marks Attendance : 05 Marks Test Schedule S.No. DATE TEST TOPICS DURATION 1 As per Calendar Cycle Test - I Unit I & II 2 periods 2 As per Calendar Cycle Test - II Unit III & IV 2 periods 3 As per Calendar Model Exam All 5 units 3 Hrs

Outcomes Students who have successfully completed this course will have full understanding of the following concepts Course outcome Program outcome To learn about Basic knowledge about Digital image processing An ability to understand the basic concepts of Digital Image Processing Image Enhancement An ability to develop Techniques for Image Enhancement Image Restoration An ability to compress images Image Compression An ability to apply the techniques to segment the images Image Segmentation, Representation and Description An ability to use image processing techniques for suitable applications

Detailed Session Plan INTRODUCTION Origin of Digital Image processing - fundamental steps - Components of Image processing system - Visual perception - Light and EM spectrum - Image sensing and acquisition - Image sampling and Quantization - relationship between pixels. Session No. Topics to be covered Time (min) Ref Teaching Method Testing Method 1 2 Origin of Digital Image processing,quiz Fundamental steps in digital image processing Quiz 3 Components of Image processing system Quiz 4 5 6 Visual perception Quiz Light and EM spectrum Quiz Image sensing and acquisition 7 Image sampling 8 Image quantization 9 Relationship between pixels. IMAGE ENHANCEMENT Spatial Domain: Gray level transformation - Histogram processing - Arithmetic / Logic operations- Spatial filtering - smoothing filters - sharpening filters Frequency Domain: Fourier transform - smoothing frequency domain filters - sharpening filters - Homographic filtering.

10 Gray level transformation, Quiz 11 12 13 14 15 16 17 18 19 20 Histogram processing Arithmetic / Logic operations- Comparative Study Spatial filtering Quiz smoothing filters Quiz Sharpening Filters Quiz, Assignment Fourier Transform Quiz, Group discussion Frequency Domain, Quiz Smoothing Frequency Domain Sharpening Filters Comparative Study Homographic filtering Quiz IMAGE RESTORATION Model of Image degradation/ restoration process - Noise models - mean filters - order statistics - adaptive filters - band reject - bandpass - notch - optimum notch filters - Linear, position invariant degradations - establishing degradation functions - Inverse filtering - Weiner - least square - Geometric mean filters. 21 Model of Image degradation/ restoration process, Noise models 50 1,3 BB 22 23 Mean Filters Quiz Order Statistics 1,3 Quiz 50 BB 24 25 26 27 Adaptive filtes BB Band Reject, Bandpass, Notch filters and optimum notch filters 50 1,3 Quiz Linear, Position invariant degradations 1,3 Estimating degrading functions Quiz

28 29 Inverse and Weiner Filtering Quiz Least square and Geometric mean filters IMAGE COMPRESSION Fundamentals - Image compression models - Information theory - error free compression: variable length - LZW - Bitplane - Lossless predictive coding; Lossy compression : Lossy predictive - transform - wavelet coding; Image compression standards. 30 Fundamentals of image compression 50 1 BB 31 32 Image compression models 50 1 Information theory 50 1 Quiz 33 Error Free Compression, Variable Length Coding 50 1 34 35 Bitplane coding 50 1 Quiz Lossless Predictive coding 50 1 36 37 38 39 Lossy Compression: Lossy predictive coding 50 1 Transform coding 50 1 Quiz Wavelet coding 50 1 Compression standards 50 1 Comparative study IMAGE SEGMENTATION, REPRESENTATION & DESCRIPTION Segmentation: Detection of discontinuities - Edge linking & Boundary detection - Thresholding - region based segmentation Representation & Description: Chain codes - Polygonal approximations - signatures - Boundary segments - Skeletons; Boundary Descriptors - Regional descriptors

40 41 42 43 44 45 Segmentation: Detection of discontinuities 50 1 BB, Quiz Edge linking, Boundary detection 50 1 BB Quiz Thresholding 50 1 Region based segmentation 50 1 Objective Type Test Chain codes: Polygonal approximations, Signatures, Boundary segments, Skeletons 50 1 Boundary and Regional Descriptors 50 1 BB Black Board PP Power Point