- Lecturer: Jean-Philippe Thiran
- EE-451 coursebook
- Moodle
Learn the basic methods of digital image analysis and pattern recognition: pre-processing, image segmentation, shape representation and classification. These concepts will be illustrated by applications in computer vision and medical image analysis.
This repository contains the material for the labs and project associated with the EPFL master course EE-451 Image Analysis and Pattern Recognition.
Please find below the list of material accessible from this repository:
We will be using git, Python, and packages from the Python scientific stack. If you don't know how to install these on your platform, we recommend to install Anaconda or Miniconda, both are distributions of the conda package and environment manager. Please follow the below instructions to install it and create an environment for the course:
- Download the latest Python 3.x installer for Windows, macOS, or Linux from
https://www.anaconda.com/download or https://conda.io/miniconda.html
and install with default settings.
Skip this step if you have conda already installed (from Miniconda or
Anaconda).
Linux users may prefer to use their package manager.
- Windows: Double-click on the
.exe
file. - macOS: Double-click on the
.pkg
file. - Linux: Run
bash Anaconda3-latest-Linux-x86_64.sh
in your terminal.
- Windows: Double-click on the
- Open a terminal. For Windows: open the Anaconda Prompt from the Start menu.
- Install git if not already installed with
conda install git
. - Download this repository by running
git clone https://github.com/LTS5/iapr
. - It is recommended to create an environment dedicated to this course with
conda create -n iapr python=3.6
. - Activate the environment:
- Linux/macOS:
source activate iapr
. - Windows:
activate iapr
.
- Linux/macOS:
- Install the packages we will be using for this course:
- Linux/macOS:
pip install --upgrade -r requirements.txt
- Windows:
conda install --file requirements.txt
- Linux/macOS:
- You can deactivate the environment whenever you are done with
deactivate
We suggest two different Python editors, but many more are available:
- Jupyter is a very useful editor that run directly in a web browser.
You can have Python and Markdown cells, hence it is very useful for
examples, tutorials and labs.
We encourage to use it for the lab assignments.
To launch a Jupyter Notebook:
- Open a terminal (for Windows open the Anaconda Prompt)
- Move to the git repository
/path/to/iapr
- Activate the environment with
source activate iapr
(For Windows:activate iapr
) - Run the command:
jupyter notebook
.
- PyCharm is an excellent Python IDE developed by JetBrains.
It is more suitable for large projects than Jupyter, hence it might be
useful for the final project.
Multiple versions are available:
- Free 'Community' version.
- Professional version: free with the education pack (available for EPFL students).