Spring 2025 - CMPT 762 G100
Computer Vision (3)
Class Number: 7297
Delivery Method: In Person
Overview
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Course Times + Location:
Jan 6 – Apr 9, 2025: Thu, 2:30–5:20 p.m.
Burnaby
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Instructor:
Andrea Tagliasacchi
taiya+spring25@sfu.ca
Office: TASC1 9205
Description
CALENDAR DESCRIPTION:
Selected topics in computer vision including cameras, edge detection, feature matching, optical flow, alignment, epipolar geometry, stereo, structure-from-motion, recognition, segmentation, detection, and deep learning.
COURSE DETAILS:
Computer vision is the process of automatically extracting information from images and videos. The course covers various aspects of Computer Vision, for example, imaging geometry (camera calibration, stereo, and panoramic image stitching), video analysis (motion detection and tracking), image segmentation, object recognition, and more. The course teaches both traditional techniques and more recent learning-based approaches such as deep neural networks, while we will focus increasingly more on the latter. The course will be based on lectures and assignments (Python). Students with non-standard backgrounds (such as video art, or the use of imaging in physics and biology) are encouraged to contact the instructor. Prerequisites: MATH 152, and it is strongly recommended that students have upper division units in Computing courses, or permission of the instructor.
COURSE-LEVEL EDUCATIONAL GOALS:
Topics
- Camera
- Features
- Image stitching
- Segmentation
- Object detection
- Recognition
- Reconstruction
- Deep learning
Grading
NOTES:
Coding Assignments (100%)
Materials
MATERIALS + SUPPLIES:
Reference Books
- Computer Vision: Algorithms and Applications (2nd edition), Richard Szeliski, Springer, 2022
(downloadable from: http://szeliski.org/Book)
REQUIRED READING NOTES:
Your personalized Course Material list, including digital and physical textbooks, are available through the SFU Bookstore website by simply entering your Computing ID at: shop.sfu.ca/course-materials/my-personalized-course-materials.
Graduate Studies Notes:
Important dates and deadlines for graduate students are found here: http://www.sfu.ca/dean-gradstudies/current/important_dates/guidelines.html. The deadline to drop a course with a 100% refund is the end of week 2. The deadline to drop with no notation on your transcript is the end of week 3.
Registrar Notes:
ACADEMIC INTEGRITY: YOUR WORK, YOUR SUCCESS
SFU’s Academic Integrity website http://www.sfu.ca/students/academicintegrity.html is filled with information on what is meant by academic dishonesty, where you can find resources to help with your studies and the consequences of cheating. Check out the site for more information and videos that help explain the issues in plain English.
Each student is responsible for his or her conduct as it affects the university community. Academic dishonesty, in whatever form, is ultimately destructive of the values of the university. Furthermore, it is unfair and discouraging to the majority of students who pursue their studies honestly. Scholarly integrity is required of all members of the university. http://www.sfu.ca/policies/gazette/student/s10-01.html
RELIGIOUS ACCOMMODATION
Students with a faith background who may need accommodations during the term are encouraged to assess their needs as soon as possible and review the Multifaith religious accommodations website. The page outlines ways they begin working toward an accommodation and ensure solutions can be reached in a timely fashion.