Mahmoud El-Sakka Computer Science Department Office: MC-419

Slides:



Advertisements
Similar presentations
Multiscale Analysis of Images Gilad Lerman Math 5467 (stealing slides from Gonzalez & Woods, and Efros)
Advertisements

Teaching Courses in Scientific Computing 30 September 2010 Roger Bielefeld Director, Advanced Research Computing.
Numbers in Images GCNU 1025 Numbers Save the Day.
Jon Schendt University of Wisconsin-Platteville Image Processing – A Computational Approach.
Georgia Department of Education. Information Technology Pathways.
Welcome to …..
GTECH 201 Introduction to Mapping Sciences. Contact Information Instructors: Jochen Albrecht (and Tom Walter) Office: Hunter N1030 Office hours: We, Th.
CPSC : Data-driven Character Animation Jinxiang Chai.
Assessment Offences Administration System Richard Jones School of Computing and Mathematical Sciences University of Greenwich (The presentation version.
Digtial Image Processing, Spring ECES 682 Digital Image Processing Oleh Tretiak ECE Department Drexel University.
Visual Speech Recognition Using Hidden Markov Models Kofi A. Boakye CS280 Course Project.
Department of Computer Engineering University of California at Santa Cruz Data Compression (2) Hai Tao.
1. What is this course all about?. Learning objectives All students will organise their folders All will understand what the structure of the course is:
Digital Signal Processing
Robustness Studies For a Multi-Mode Information Embedding Scheme for Digital Images Daniel Eliades Mentor: Dr. Neelu Sinha Department of Math and Computer.
Math 3360: Mathematical Imaging Prof. Ronald Lok Ming Lui Department of Mathematics, The Chinese University of Hong Kong Lecture 1: Introduction to mathematical.
CEN352 Digital Signal Processing Lecture No. 1 Department of Computer Engineering, College of Computer and Information Sciences, King Saud University,
ICS104 Computer Programming Second Semester 2012/2013 ICS1041 Tuwailaa Alshammari College of Computer Science & Engineering University.
EEE 503 Digital Signal Processing Lecture #1 : Introduction Dr. Panuthat Boonpramuk Department of Control System & Instrumentation Engineering KMUTT.
Digital Image Processing, 2nd ed. © 2002 R. C. Gonzalez & R. E. Woods Chapter 8 – Image Compression.
MTH 201 Discrete Mathematics Fall Term MTH 201 Discrete Mathematics Fall Term INTERNATIONAL BURCH UNIVERSITY DEPARTMENT of INFORMATION.
Department of Computer Science & Software Engineering Software Engineering Economics (ECON 403)
Computer Vision – Compression(1) Hanyang University Jong-Il Park.
Computing Systems: Organization and Design EE460/CS360/T425.
Lecture 0Slide 1 Welcome to IKI 10230I Introduction to Computer Organization Teacher: L. Yohanes Stefanus office: Fasilkom Building.
Destructive Interference – Active Noise Reduction (ANR) Koss Noise Reduction Headphones.
Monday, January 11,  INSTRUCTORS  STUDENTS:  Name?  Class?  Hometown?  Major?  Background: Math? Computers? Statistics?  Why did you take.
COMM 604:Channel Coding Course Instructor: Tallal Elshabrawy Instructor Office: C3.321 Lecture Time & Loc.: Tues. 2 nd Slot H19 Instructor
Fundamental Digital Electronics
Filtering of map images by context tree modeling Pavel Kopylov and Pasi Fränti UNIVERSITY OF JOENSUU DEPARTMENT OF COMPUTER SCIENCE FINLAND.
Lecture 0 Overview Hong, You Pyo, DGU 1. Y. Hong Microprocessor A semiconductor device that contains a CPU (Central Processing Unit) and peripherals In.
Course Name: Speech Recognition Course Number: Instructor: Hossein Sameti Department of Computer Engineering Room 706 Phone:
DATA MINING: LECTURE 1 By Dr. Hammad A. Qureshi Introduction to the Course and the Field There is an inherent meaning in everything. “Signs for people.
Online Documents – File Compression File size can be a big deal Like when you want more music on your phone Or work on your USB stick Or when you.
My Research in a Nut-Shell Michael Elad The Computer Science Department The Technion – Israel Institute of technology Haifa 32000, Israel Meeting with.
Vocabulary byte - The technical term for 8 bits of data.
Digital Image Processing Fall Course Syllabus
Lesson 1-15 AP Computer Science Principles
Dates for Stop Smoking Courses 2013
TK1914 C++ Programming Course Introduction.
Welcome to the course! Meetings and communication: AC meetings
Welcome to the course! Meetings and communication: AC meetings
Unit 2- Lesson 1 & 2- Bytes and File Sizes / Text Compression
Unit 2- Lesson 1 & 2- Bytes and File Sizes / Text Compression
Media English Media Terminology
Detection and Estimation Theory Introduction to ECE 531
Special Topics in Data Mining Applications Focus on: Text Mining
Chapter 2: Digital Image Fundamentals
Image Processing Course
Jeremy Bolton, PhD Assistant Teaching Professor
Chapter 2: Digital Image Fundamentals
Dr. Bhavani Thuraisingham The University of Texas at Dallas
Image Processing, Leture #16
Date, location, department
Mahmoud El-Sakka Computer Science Department Office: MC-419
Image Compression Purposes Requirements Types
Date, location, department
Representation Learning with Deep Auto-Encoder
Fundamental of Artificial Intelligence (CSC3180)
Materi 06 Pengolahan Citra Digital
Unit 2- Lesson 1 & 2- Bytes and File Sizes / Text Compression
Data Compression.
493 Hybrid – What - How - Why Schedule Info – Contact - Questions
NAME OF EVENT Name of Speaker Date, location, department
CSE 486/586 Distributed Systems Wrap-up
Introduction to Programming Environments for Elementary Education
Dr. Bhavani Thuraisingham The University of Texas at Dallas
CS 232 Geometric Algorithms: Lecture 1
Advanced Placement Exams
Presentation transcript:

Mahmoud El-Sakka Computer Science Department Office: MC-419 Email: elsakka@csd.uwo.ca Phone: 519-661-2111 x86996

Current Research Interest Image denoising Image compression

Image denoising Attempts to automatically reduce existing noise in digital Images. Denoised image Original Noisy Image

Image compression Compression: is a bit-rate reduction which involves encoding information using fewer bits

Prediction methods Similarity methods Statistical methods

All required image-related background will be built during the course Teaching NO final EXAM!! CS4481b/CS9628b Image compression To provide students with a solid understanding of the fundamentals and principles of various digital Image Compression Schemes All required image-related background will be built during the course Second term on Wednesdays from 10:30 pm to 1:30 pm

For Listening  