Digital Image Processing (EE421) Course Detail

Course Name Course Code Season Lecture Hours Application Hours Lab Hours Credit ECTS
Digital Image Processing EE421 2 2 0 3 5
Pre-requisite Course(s)
MATH 275
Course Language English
Course Type N/A
Course Level Natural & Applied Sciences Master's Degree
Mode of Delivery Face To Face
Learning and Teaching Strategies Lecture, Discussion, Experiment, Question and Answer, Drill and Practice, Team/Group, Brain Storming.
Course Coordinator
Course Lecturer(s)
  • Asst. Prof. Dr. Hakan Tora
Course Assistants
Course Objectives •Study the image fundamentals and mathematical transforms necessary for image processing. •Study the image enhancement techniques •Study image restoration procedures. •Study the image compression procedures. •Study the image segmentation and representation techniques
Course Learning Outcomes The students who succeeded in this course;
  • Understand the basic concepts of digital image processing such as 2D data representation, color image representation, 2D sampling and quantization, and 2D filtering
  • Understand the basic theory of transforms and learn the properties and use of different types of transforms
  • Learn the basics of different image processing methods such as image enhancement, image filtering and restoration, image analysis, image compression
  • Propose methods to solve image processing problems
  • Ability to complete a term project
Course Content 2-D systems and transforms, image acquisition, sampling and quantization, linear and non-linear techniques for image enhancement and restoration and image compression, differential pulse code modulation, vector quantization, wavelets, subband coding, still and video compression coding standards.

Weekly Subjects and Releated Preparation Studies

Week Subjects Preparation
1 Digital Image Fundamentals and Transforms Glance this week’s topics from the lecture
2 Image Enhancement in the Spatial Domain •Gray Level Transformations •Histogram Processing •Spatial Filtering Review last week and glance this week’s topics from the lecture
3 Image Enhancement in the Spatial Domain •Smoothing Spatial Filters •Sharpening Spatial Filters Review last week and glance this week’s topics from the lecture
4 Image Enhancement in the Frequency Domain •Fourier Transform and Frequency Domain •Smoothing Frequency Domain Filters •Sharpening Frequency Domain Filters Review last week and glance this week’s topics from the lecture
5 Image Enhancement in the Frequency Domain •Homomorphic Filtering •Implementation Review last week and glance this week’s topics from the lecture
6 Image Restoration Techniques •Degradation Model •Inverse Filtering •Wiener Filtering Glance this week’s topics from the lecture
7 Image Restoration Techniques Review last week and glance this week’s topics from the lecture
8 Image Segmentation •Detection of Discontinuities •Edge Linking and Boundary Detection •Thresholding Glance this week’s topics from the lecture
9 Image Segmentation •Region Based Segmentation •The use motion in Segmentation Review last week and glance this week’s topics from the lecture
10 Image Compression •Image Compression Models •Elements of Information Theory •Error-Free Compression •Lossy Compression •Image Compression Standards Glance this week’s topics from the lecture
11 Morphological Image Processing •Dilation and Erosion •Opening And Closing •Morphological Algorithms Glance this week’s topics from the lecture
12 Representation and Description •Representation •Boundary Descriptors •Regional Descriptors Glance this week’s topics from the lecture
13 Representation and Description •Use of Principle of Components for Description Review last week and glance this week’s topics from the lecture
14 Object Recognition •Patterns and Pattern Classes •Matching, Optimum Statistical Classifiers Glance this week’s topics from the lecture
15 Final examination period Review topics
16 Final examination period Review topics

Sources

Course Book 1. Digital Image Processing,2nd Edition, Rafael C. Gonzales and Richard E. Woods, Pearson Education, 2003.
Other Sources 2. Two-Dimensional Signal and Image Processing, Jae S. Lim, Prentice-Hall, 1989.
3. Digital Video Processing, A. Murat Tekalp, Prentice-Hall, 1995.

Evaluation System

Requirements Number Percentage of Grade
Attendance/Participation - -
Laboratory 9 15
Application - -
Field Work - -
Special Course Internship - -
Quizzes/Studio Critics - -
Homework Assignments - -
Presentation - -
Project 1 15
Report - -
Seminar - -
Midterms Exams/Midterms Jury 1 40
Final Exam/Final Jury 1 30
Toplam 12 100
Percentage of Semester Work 70
Percentage of Final Work 30
Total 100

Course Category

Core Courses X
Major Area Courses
Supportive Courses
Media and Managment Skills Courses
Transferable Skill Courses

The Relation Between Course Learning Competencies and Program Qualifications

# Program Qualifications / Competencies Level of Contribution
1 2 3 4 5
1 Ability to apply knowledge on Mathematics, Science and Engineering to advanced systems. X
2 Implementing long-term research and development studies in the major fields of Electrical and Electronics Engineering. X
3 Ability to use modern engineering tools, techniques and facilities in design and other engineering applications. X
4 Graduating researchers active on innovation and entrepreneurship.
5 Ability to report and present research results effectively.
6 Increasing the performance on accessing information resources and on following recent developments in science and technology.
7 An understanding of professional and ethical responsibility.
8 Increasing the performance on effective communications in both Turkish and English.
9 Increasing the performance on project management.
10 Ability to work successfully at project teams in interdisciplinary fields.

ECTS/Workload Table

Activities Number Duration (Hours) Total Workload
Course Hours (Including Exam Week: 16 x Total Hours) 16 3 48
Laboratory 6 2 12
Application
Special Course Internship
Field Work
Study Hours Out of Class 14 2 28
Presentation/Seminar Prepration 2 2 4
Project 1 20 20
Report
Homework Assignments 7 2 14
Quizzes/Studio Critics
Prepration of Midterm Exams/Midterm Jury 2 2 4
Prepration of Final Exams/Final Jury 1 2 2
Total Workload 132