Intelligence Artificielle et Multimédia

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    In brief

  • Code : N9EN15A


At the end of this module, the student should have understood and be able to explain (main concepts):

- The use of deep learning algorithms for the classification of complex high-dimensional data with prediction error estimation

- The main classification algorithms for media data

- Applications of deep learning methods to real-world data sets


The student should be able to:

- Fit deep neural networks for classification or regression of media data: images, videos, 3D.

- Implement deep learning algorithms on real data using Python libraries.


This course is dedicated to learning methods and in particular deep learning methods, for the processing of high dimensional data such as images for example.

- Neural networks and introduction to deep learning: definition of neural networks, activation functions, multilayer perceptron, gradient backpropagation algorithm, optimization algorithms, regularization.

- Convolutional neural networks: convolutional layer, pooling, dropout, architecture of convolutional networks, learning transfer, applications to image classification, object detection, image segmentation, posture estimation, etc.

- Recurrent neural networks: sequence modeling, recurrent neuron, backpropagation through time, LSTM and GRU, applications to natural language processing and audio and video signal processing.

- Neural networks and 3D: 3D convolutional networks for volumetric data processing (e.g. MRI), PointNet and PointNet++ networks for 3D point cloud processing (e.g. LIDAR).

Targeted skills

deep learning, deep neural networks


- Goofellow I., Bengio Y., Courville A. “ Deep Learning”, MIT Press

- Hastie, T. Tibshirani, R., Friedman, J.  “The elements of statistical learning”, Springer, 2001

- Chollet, F. “Deep Learning with Python”, Manning Publications, 2018


Statistics, Statistical learning




The National Institute of Electrical engineering, Electronics, Computer science,Fluid mechanics & Telecommunications and Networks

2, rue Charles Camichel - BP 7122
31071 Toulouse Cedex 7, France

+33 (0)5 34 32 20 00


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