Course Information
SemesterCourse Unit CodeCourse Unit TitleT+P+LCreditNumber of ECTS CreditsLast Updated Date
1AIN432Image Processing Laboratory0+2+01412.08.2025

 
Course Details
Language of Instruction English
Level of Course Unit Bachelor's Degree
Department / Program ARTIFICIAL INTELLIGENCE ENGINEERING
Type of Program Formal Education
Type of Course Unit Elective
Course Delivery Method Face To Face
Objectives of the Course The subject matter of this course is to make the students practice the fundamentals of image processing.
Course Content Image formation,
Point operations and histogram processing,
Spatial filtering techniques,
Frequency domain approaches,
Image smoothing,
Edge detection
Image segmentation
Learning based approaches
Course Methods and Techniques Lecture, Problem Solving, Drill and Practice, Preparing and/or Presenting Reports
Prerequisites and co-requisities ( BBM104 ) and ( BBM102 ) and ( AIN430 )
Course Coordinator None
Name of Lecturers Associate Prof. Ali Seydi Keçeli
Assistants None
Work Placement(s) No

Recommended or Required Reading
Resources Computer Vision: Algorithms and Applications, Richard Szeliski, Springer, 2010; Digital Image Processing, R. C. Gonzalez, R. E. Woods, 3rd Edition, Prentice Hall, 2008; AIN430 lecture notes
Course Notes Computer Vision: Algorithms and Applications, Richard Szeliski, Springer, 2010

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

AIN430 lecture notes


Planned Learning Activities and Teaching Methods
Activities are given in detail in the section of "Assessment Methods and Criteria" and "Workload Calculation"

Assessment Methods and Criteria
In-Term Studies Quantity Percentage
Quiz 8 % 20
Practice 2 % 40
Final examination 1 % 40
Total
11
% 100

 
ECTS Allocated Based on Student Workload
Activities Quantity Duration Total Work Load
Course Duration 14 2 28
Hours for off-the-c.r.stud 10 2 20
Practice 2 14 28
Preparation for Midterm Exam 8 3 24
General Exam Preparation 1 20 20
Total Work Load   Number of ECTS Credits 4 120

 
Course Learning Outcomes: Upon the successful completion of this course, students will be able to:
NoLearning Outcomes
1 After completing the course, the students will have the ability to develop applications in image processing
2 practice the fundamentals of image processing through applications and gain the ability of performing scientific analysis within the image processing problems.
3  
4  
5  
6  
7  
8  

 
Weekly Detailed Course Contents
WeekTopicsStudy MaterialsMaterials
1 Introduction, image formation and the digital camera
2 Color perception, color spaces and point operations
3 Spatial filtering
4 Frequency domain techniques
5 Frequency domain techniques
6 Image pyramids and wavelets
7 Gradients, edges, and contours
8 Image smoothing
9 Practical application
10 Image segmentation
11 Learning-based image processing applications
12 Learning-based image processing applications
13 Learning-based image processing applications
14 Practical application
15 Final exam preparation
16 Final exam

 
Contribution of Learning Outcomes to Programme Outcomes
P1 P2 P3 P4 P5 P6 P7 P8 P9 P10 P11 P12
All 4 4 2 4 4 4 4 4 3 3 2 4
C1
C2
C3
C4
C5
C6
C7
C8

  Contribution: 1: Very Slight 2:Slight 3:Moderate 4:Significant 5:Very Significant

  
  https://bilsis.hacettepe.edu.tr/oibs/bologna/progCourseDetails.aspx?curCourse=2733664&lang=en