Announcements

  1. (Sep 24) Course page is online.
  2. (Sep 24) Syllabus is available.
  3. (Sep 25) Slides for introduction are available.
  4. (Sep 25) Slides for digital image fundamentals are available.
  5. (Oct 2) Slides for binary image analysis are available.
  6. (Oct 8) Slides for filtering are available.
  7. (Oct 11) Homework assignment 1 is available.
  8. (Oct 15) Slides for edge detection are available.
  9. (Oct 22) Slides for local feature detectors are available.
  10. (Oct 30) Slides for color image processing are available.
  11. (Oct 30) Slides for texture analysis are available.
  12. (Nov 5) Homework assignment 2 is available.
  13. (Nov 13) Slides for segmentation are available.
  14. (Nov 22) Slides for representation and description are available.
  15. (Nov 30) Homework assignment 3 is available.
  16. (Dec 4) Slides for pattern recognition are available.
  17. (Dec 11) Slides for image classification are available.
  18. (Dec 20) Project description is available.
  19. (Dec 21) Slides for object recognition and deep learning are available.

Personnel

Instructor: Selim Aksoy (Office: EA 422, Email: )
TA: Mert Bülent Sarıyıldız (Office: EA 427, Email: mert.sariyildiz[at]bilkent.edu.tr)

Course Information

Schedule: Tue 8:40-10:30, Thu 10:40-12:30 (EE 04)
Office hours: Selim Aksoy: Tue 13:40-15:30
Mert Bülent Sarıyıldız: by appointment
Catalog description: Image acquisition, sampling and quantization. Spatial domain processing. Image enhancement. Texture analysis. Edge detection. Frequency domain processing. Color image processing. Mathematical morphology. Image segmentation and region representations. Statistical and structural scene descriptions. Applications.
Prerequisites: Good background on high-level programming, data structures, linear algebra, and vector calculus. No prior knowledge of image processing or computer vision is assumed.
Syllabus: Make sure you read the syllabus for course details.

Texts

Lectures

Topics

Contents

Introduction

[ Slides ]

Topics:
  • Overview
  • Example applications
Demos:

Digital Image Fundamentals

[ Slides ]

Topics:
  • Acquisition, sampling, quantization
  • Image enhancement
  • Image formats
  • Linear algebra and MATLAB review
Readings:
  • SS Ch 1, 2
  • GW Ch 1, 2, 3.1-3.4
References:
  • R. C. Gonzales, R. E. Woods, "Review material and slides on linear algebra, probability, and linear systems," 2002.
Software:

Binary Image Analysis

[ Slides: Part 1 | Part 2 ]

Topics:
  • Pixels and neighborhoods
  • Mathematical morphology
  • Connected components analysis
  • Automatic thresholding
Readings:
  • SS Ch 3.1-3.5, 3.8
  • GW Ch 2.5, 9.1-9.5, 10.3
References:
Software:

Filtering

[ Slides: Part 1 | Part 2 ]

Topics:
  • Spatial domain filtering
  • Frequency domain filtering
  • Image enhancement
Readings:
  • SS Ch 5.1-5.5, 5.10-5.11
  • GW Ch 3.5-3.8, 4
Software:

Edge Detection

[ Slides ]

Topics:
  • Edges, lines, arcs
  • Hough transform
Readings:
  • SS Ch 5.6-5.8, 10.3-10.4
  • GW Ch 10.1-10.2
References:
Software:

Local Feature Detectors

[ Slides ]

Topics:
  • Corners and other interest points
  • Invariants
References:
Software:

Color Image Processing

[ Slides ]

Topics:
  • Color spaces and conversions
Readings:
  • SS Ch 6.1-6.5
  • GW Ch 6

Texture Analysis

[ Slides ]

Topics:
  • Statistical approaches
  • Structural approaches
Readings:
  • SS Ch 7
  • GW Sec 11.3.3

Image Segmentation

[ Slides ]

Topics:
  • Histogram-based approaches
  • Clustering-based approaches
  • Region growing
  • Split-and-merge
  • Morphological approaches
  • Graph-based approaches
Readings:
  • SS Ch 10.1
  • GW Ch 10.4-10.5
References:
Software:

Representation and Description

[ Slides ]

Topics:
  • Image representations and descriptors
  • Region representations and descriptors
Readings:
  • SS Ch 10.2, 3.7
  • GW Ch 11
References:

Pattern Recognition Overview

[ Slides: Part 1 | Part 2 ]

Topics:
  • Brief introduction to pattern recognition
Readings:
  • SS Ch 4
  • GW Ch 12.1-12.2
References:
Software:

Case Studies

[ Slides: Part 1 | Part 2 (with kind permission from Prof. Linda Shapiro) | Part 3 (with kind permission from Joseph Redmon) ]

Topics:
  • Image classification
  • Object recognition
  • Deep learning
References:

Exams

Homework

  1. Homework assignment 1: description | data (Due: October 31, 2018 as online submission)
  2. Homework assignment 2: description | data (Due: November 26, 2018 as online submission)
  3. Homework assignment 3: description | data (Due: December 17, 2018 as online submission)

Please make sure you fully understand the honor code in the syllabus as well as the Bilkent University Policy on Academic Honesty (in Turkish) and the Rules and Regulations of the Higher Education Council (YOK) (in Turkish). Cheating and plagiarism on exams, quizzes, and assignments will be punished according to these regulations.

Project

The goal of the project is to develop an object localization and recognition method based on object proposals and deep features.

Grading Policy

Homework:35%
Quiz:10%
Exam:25%
Project:25%
Class participation:5%

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