Skip to content

Source materials for KAIST course CS492: Machine Learning for Computer Vision

Notifications You must be signed in to change notification settings

anar-rzayev/Machine-Learning-for-Computer-Vision

Repository files navigation

CS492: Machine Learning for Computer Vision

Welcome to the "Machine Learning for Computer Vision" repository, your go-to hub for materials and resources for the KAIST CS492 course. Here, we offer a curated collection of coursework files, lab materials, and the course textbook, tailored to support your learning journey in exploring machine learning within the field of computer vision.

📚 Repository Structure

  • Coursework: In this directory, discover the array of coursework files elucidating the assignments and projects undertaken by Team 19 during the Fall 2021 semester.

    • CW1_Team_19.pdf: (Add a brief description of this document here)
    • CW2_Team_19.pdf: (Add a brief description of this document here)
  • Lab Materials: Explore a compilation of indispensable materials for Lab 2 and forthcoming labs, offering a step-by-step guide for each lab session.

    • Lab2: (Add a brief description of this lab here)
  • Textbook: The primary textbook for the course, facilitating a deep understanding of the pivotal concepts explored during the lectures.

    • Richard O. Duda, Peter E. Hart, David G. Stork: Dive deep into the world of pattern classification through this essential text, ideal for every course participant.
  • Fall21 Materials: A reservoir of all materials utilized during the Fall 2021 semester, aiming to be a priceless resource for both current and prospective students.

🛠️ Installation and Usage

To make full use of the rich resources available in this repository, follow the step-by-step guide below:

  1. Clone the repository onto your local system using the command below:
git clone https://github.com/your-github-username/CS492-Machine-Learning-for-Computer-Vision.git

About

Source materials for KAIST course CS492: Machine Learning for Computer Vision

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published