Publication date : 01/22/2024

Course : AI Python for image processing

Transform, extract and analyze images with libraries: Pilow, Matplotlib, OpenCV, Scikit, ...

Practical course - 3d - 21h00 - Ref. PYI
Price : 1650 € E.T.

AI Python for image processing

Transform, extract and analyze images with libraries: Pilow, Matplotlib, OpenCV, Scikit, ...



This Python artificial intelligence course will enable you to perform machine learning data analysis. You'll learn how to transform an image and extract information from it. We'll introduce you to the image processing libraries most commonly used in deep learning projects.


INTER
IN-HOUSE
CUSTOM

Practical course in person or remote class
Available in English on request

Ref. PYI
  3d - 21h00
1650 € E.T.




This Python artificial intelligence course will enable you to perform machine learning data analysis. You'll learn how to transform an image and extract information from it. We'll introduce you to the image processing libraries most commonly used in deep learning projects.


Teaching objectives
At the end of the training, the participant will be able to:
Deepen your knowledge of the Python language
Performing Machine Learning data analysis in Python
Discover Python image processing libraries
Transforming an image
Extract information from an image

Intended audience
Python developers wishing to familiarize themselves with the main automated learning and image processing tools.

Prerequisites
Python language skills and knowledge of NumPy and SciPy.

Course schedule

1
Image processing

  • The Pillow library for transforming images.
  • Presentation of image analysis libraries.
  • Simple image manipulation with NumPy.
  • Introducing Matplotlib for fast display.
Hands-on work
Use Pip or Conda, simple manual image transformations with Numpy.

2
More advanced image processing

  • Filtering, analysis and information retrieval with Scikit-image.
  • Presentation and transformations with OpenCV.
  • OpenCV: contour and pattern detection.
Hands-on work
Set up libraries, manipulate and analyze images with Scikit-image and OpenCV.

3
Automated learning

  • Setting up Scikit-learn.
  • Example of usable data and classification of automated learning processes.
  • Choosing and using an estimator.
  • Enhanced supervised learning and transformers.
Hands-on work
Multiple supervised learning on datasets with Scikit-learn.

4
Additional cases of automated learning

  • Decomposition - principal component analysis and linear discriminant analysis.
  • Unsupervised learning: multiple approaches.
  • Various classification algorithms.
Hands-on work
Use of additional learning algorithms from Scikit-learn.

5
Learning for images

  • Image classification with Scikit-learn, review of available algorithms.
  • Introducing and installing scikit-image.
  • Library for adapting machine learning to digital images
  • Scikit-image inputs and outputs.
  • Image analysis with Scikit-image: segmentation, detection, measurement.
  • Simple image transformations with Scikit-learn: convolutions and other filters.
  • Image comparison and stitching with Scikit-image.
  • Image enhancement with Scikit-image.
Hands-on work
Image classification, face detection, reconstructions and enhancements with scikit-learn and scikit-image.


Customer reviews
4,6 / 5
Customer reviews are based on end-of-course evaluations. The score is calculated from all evaluations within the past year. Only reviews with a textual comment are displayed.
AURELIEN D.
21/01/26
5 / 5

Excellent quality support, very competent and educational trainer.
NATHALIE S.
21/01/26
5 / 5

The programme is relevant and progressive, with a good balance between theory and practical work, clear explanations and a solid understanding of the concepts involved in images and AI, providing an excellent basis for continuing the work independently.
REMI B.
01/12/25
4 / 5

The exercises were a little too quick. It's a pity we only did the practical work on CNNs at the end of the course.



Dates and locations
Select your location or opt for the remote class then choose your date.
Remote class

Dernières places
Date garantie en présentiel ou à distance
Session garantie

REMOTE CLASS
2026 : 16 Mar., 15 June, 26 Oct.

PARIS LA DÉFENSE
2026 : 16 Mar., 15 June, 26 Oct.