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Regular version of the site
Master 2022/2023

Project seminar "Deep learning for computer vision"

Type: Compulsory course (Master of Computer Vision)
Area of studies: Applied Mathematics and Informatics
Delivered by: Department of Applied Mathematics and Informatics
When: 1 year, 4 module
Mode of studies: offline
Open to: students of one campus
Instructors: Andrey Savchenko
Master’s programme: Master of Computer Vision
Language: English
ECTS credits: 9
Contact hours: 3

Course Syllabus

Abstract

This course covers basics of Deep Learning approaches applied to the popular Computer Vision tasks. The aim of the course is to highlight how the modern 2D Computer Vision works and how the area evolved to this. Students will learn the main concepts of the modern 2D Computer Vision, how to master some popular applied tasks and try by themselves. Every week, the students will learn a standalone chapter of Computer Vision starting from the Image Classification approaches, through Object Detection, Image Segmentation and ending with some cutting-edge and real-life approaches. The students also will introduced to the popular datasets for each task along with the common quality estimation procedures and open source solutions.
Learning Objectives

Learning Objectives

  • The aim of the course is to highlight how the modern 2D Computer Vision works and how the area evolved to this.
Expected Learning Outcomes

Expected Learning Outcomes

  • Students will touch with modern Deep Learning frameworks
  • Students will build their first neural networks models
  • ● Students will learn how to use pretrained image classifiers and build their own
  • ● Students will learn how to use pretrained object detector and build their own
  • ● Students will learn how to use existing REID models and build their own
  • ● Students will learn how to track their objects
  • Students will learn how to use pretrained image segmentation model and uild their own
  • Students willattempt to create a prototype of real-life video surveillance solution
Course Contents

Course Contents

  • Introduction to Deep Learning
  • Deep Learning for Image Classification
  • Deep Object Detection
  • Deep Object Tracking and Person Reidentification
  • Deep Image Segmentation
  • Final project
Assessment Elements

Assessment Elements

  • non-blocking test week 1-4
  • non-blocking Programming assingment
  • non-blocking Final exam
Interim Assessment

Interim Assessment

  • 2022/2023 4th module
    0.2 * test week 1-4 + 0.4 * Programming assingment + 0.4 * Final exam
Bibliography

Bibliography

Recommended Core Bibliography

  • Beysolow, T. (2018). Applied Natural Language Processing with Python : Implementing Machine Learning and Deep Learning Algorithms for Natural Language Processing. [Berkeley, CA]: Apress. Retrieved from http://search.ebscohost.com/login.aspx?direct=true&site=eds-live&db=edsebk&AN=1892182
  • Jiao, L., Zhang, F., Liu, F., Yang, S., Li, L., Feng, Z., & Qu, R. (2019). A Survey of Deep Learning-based Object Detection. https://doi.org/10.1109/ACCESS.2019.2939201
  • Tareq Khan. (2019). A Deep Learning Model for Snoring Detection and Vibration Notification Using a Smart Wearable Gadget. Electronics, (9), 987. https://doi.org/10.3390/electronics8090987

Recommended Additional Bibliography

  • Deep learning, Kelleher, J. D., 2019
  • Introduction to deep learning, Charniak, E., 2018

Authors

  • Трехлеб Ольга Юрьевна
  • RASSADIN ALEKSANDR GEORGIEVICH