Machine Learning for Imaging
Module aims
This module covers the fundamental concepts and advanced methodologies of machine learning for imaging and relates those to real-world problems in computer vision and medical image analysis. You will experience different approaches to machine learning including supervised and unsupervised techniques with an emphasis on deep learning methods. Applications include image classification, semantic segmentation, object detection and localisation, and registration. A key objective is to equip you with the skills needed to work in, and conduct research into, image computing and applied machine learning.
Learning outcomes
Upon successful completion of this module you will be able to:
- Select and apply appropriate machine learning methods for solving practical problems in image computing.
- Implement and assess techniques for image classification, regression, semantic segmentation, object detection and localisation in imaging data.
- Compare, characterise and quantitatively assess competing approaches to computer vision and image computing.
- Evaluate the performance of computer vision and image computing algorithms.
- Analyse critically the limitations of machine learning techniques in the domain of image computing.
Module syllabus
- Introduction to machine learning for imaging
- Image classification
- Image segmentation
- Object detection & localisation
- Image registration
- Generative models and representation learning
- Application to real-world problems
Highly recommended modules: Computer Vision, Introduction to Machine Learning, and Deep Learning.
Teaching methods
This module focuses on learning through doing. Each week a new topic is introduced in a lecture, followed by a hands-on computer-based laboratory sessions with programming exercises in which taught methods and algorithms are implemented and tested on example data from different imaging applications. Support is given by the course leaders and Graduate Teaching Assistants (GTAs) allowing you to get further advice and feedback from experts. The learned material is applied in one coursework which aims at building a substantial real-world imaging application.
An online service will be used as a discussion forum for the module.
Assessments
There will be one assessed mini-project (coursework) focusing on developing machine learning based computer vision applications. The project is designed to reinforce the material covered in lectures and give you hands-on experience of solving real imaging problems. You work in groups of two. In total the coursework counts for 20% of the marks for the module. There will be a final written exam, testing core knowledge and skills and your ability to transfer what you have learnt to unseen problems. This exam counts for the remaining 80% of the marks for the module.
Feedback for the weekly programming exercises and coursework is provided by Q&A sessions during the lectures. You will also receive written feedback for the coursework; this will be returned electronically.
Reading list
Background material
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Pattern recognition and machine learning
Springer
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Deep Learning Foundations and Concepts
1st, Springer
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Deep learning
The MIT Press
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Mathematics for machine learning
Cambridge University Press
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Medical Image Analysis
Elsevier Science & Technology
Module leaders
Professor Ben GlockerMr Athanasios Vlontzos
Professor Daniel Rueckert