IN4310 – Deep Learning for Image Analysis

Schedule, syllabus and examination date

Course content

This course teaches common methods in deep learning applied to image data, covering key deep learning algorithms and concepts for training neural networks. The course’s focus is on supervised learning and image classification. Nevertheless, the course will also introduce other common learning regimes and image analysis tasks, such as image segmentation and object detection.

Learning outcome

After this course you will:?

  • understand how neural networks are built and how backpropagation works;?

  • understand key mathematical insights and intuition behind the training process, how to check and avoid underfit and overfit during training to facilitate generalization, and regularization techniques for a neural network;?

  • know how to train a neural network from scratch, use pre-trained models, finetune the neural networks, and discern when to use each approach to solve a problem;?

  • understand how to treat the data (augment and clean it) to improve the efficacy of neural networks;?

  • know different network architectures and in what contexts they are suitable;?

  • understand the inductive bias of locality imposed by convolutions, its implementation on convolutional neural networks, and its application to imaging;?

  • understand the supervised learning regime and know others, such as semi-supervised, un-supervised and self-supervised learning;?

  • know how to apply deep learning to solve problems that depend on imaging data, for example, image classification, object segmentation, object detection, among others; ?

  • have experience in using Pytorch.?

Admission to the course

Students admitted at UiO must?apply for courses?in Studentweb. Students enrolled in Master's Degree Programmes belonging to other Departments than IFI can, on application, be admitted to the course if this is cleared by their own study programme.

If you are not already enrolled as a student at UiO, please see our information about?admission requirements and procedures for international applicants.

The student ought to have a strong background in?

  • programming, for this we recommend IN2010;?
  • mathematics (calculus and linear algebra), we recommend that the student has taken MAT1110, and it will be good to have MAT1120;?
  • statistics and machine learning, we recommend that the student has taken either FYS-STK3155 or STK-IN4300.?

It is also recommended to have some knowledge on applications related to images, such as from IN2070.?

Overlapping courses

Teaching

2 hours of lectures and 2 hours of exercises each week.

The course has mandatory assignments that must be approved before the exam.?Read more about requirements for submission of assignments, group work and legal cooperation under guidelines for mandatory assignments.

Examination

Written exam (4 hours).?

All mandatory assignments must be approved before you can take the exam.?

It will also be counted as one of your three attempts to sit the exam for this course, if you sit the exam for one of the following courses:? IN3310 – Dyp l?ring for bildeanalyse, IN5400 – Machine Learning for Image Analysis (continued), IN9400 – Machine Learning for Image Analysis (discontinued), INF5860, INF9860

Examination support material

No examination support material is allowed.?

Grading scale

Grades are awarded on a scale from A to F, where A is the best grade and F is a fail. Read more about the grading system.?

More about examinations at UiO

You will find further guides and resources at the web page on examinations at UiO.

Last updated from FS (Common Student System) Nov. 5, 2024 11:24:40 AM

Facts about this course

Level
Master
Credits
10
Teaching
Spring
Examination
Spring
Teaching language
English