Dato | Undervises av | Sted | Tema | Kommentarer / ressurser |
20.01.2016 | Anne Solberg Are Jensen |
OJD, 2458 Postscript | Introduction and a taste of the course. Classification basics (reminder). |
Introduction to the course (lecture foils) Feature-based classification principles (lecture foils) |
27.01.2016 | Are Jensen | Feature selection (in the context of supervised classification) |
Reading material: Sections 5.1, 5.2, 5.5 (5.5.1 and 5.5.2 not too detailed), 5.6 in ”Pattern Recognition” by S. Theodoridis and K. Koutroumbas. For the randomized methods: Computational methods of feature selection, Liu, 2007, chapter Randomized feature selection, especially sections 6.4 and 6.5. |
|
03.02.2016 | Are Jensen | Linear feature transforms | Lecture foils (4pp).
Reading material: The chapter on PCA in C.R. Shalizi's "Advanced Data Analysis from an Elementary Point of View". (Until the example in 17.2.) Supporting material: Short appendix on Lagrange multipliers, from PRML, Bishop 2006. The following very elementary introduction to PCA might be useful for some: A tutorial on PCA, Shlens, 2009. |
|
10.02.2016 | Are Jensen | DSB lab, room 4270 | Lab on feature selection and linear transforms |
Script on the "curse of dimensionality" Feature selection example script Helping you along: |
17.02.2016 | Anne Solberg | Regularization, and snakes - active contour models |
Lecture foils Reading material: |
|
24.02.2016 | Anne Solberg | Markov random fields and contextual models |
Reading material: 3.7.2 and 5.3 in Szeliski. Additional reading: |
|
02.03.2016 | Anne Solberg | Lab on active contours/Markov models | Exercise text | |
09.03.2016 | Are Jensen | Basics of support vector machine (SVM) classification | Lecture notes
Based on the following sections from Pattern Recognition by Teodoridis/Koutroumbas found at ~inf5300/pensum-artikler: svm_kap3.pdf |
|
16.03.2016 | Are Jensen | SVM lab | ||
Easter | Mandatory exercise Deadline April 22 |
|||
30.03.2016 | Anne Solberg | Extracting good features for matching/trackingLe |
Lecture notes |
|
06.04.2016 | Anne Solberg | Image alignment and RANSAC | Lecture notes Reading material: Background on gemetric transforms: 2.1.1 and 2.1.2 in Szeliski Ransac: 6.1 More on Ransac: Ransac for dummies |
|
13.04.2016 | Anne Solberg | Motion estimation |
Lab on motion is here |
|
20.04.2016 | Anne Solberg | Lab |
Solve labs on SIFT and motion or work with mandatory exercise
|
|
27.04.2016 | No lecture this week. | |||
04.05.2016 | No lecture this week. | |||
11.05.2016 | Are Jensen | Basics of graph-based semi-supervised learning | Lecture slides (some slight changes made May 12)
Reading material: Chapelle et al. SSL chapter one. Bengio et al. Label propagation. Note: Please see page 1 on the lecture slides to get a detailed description of what is the curriculum in the above links! Supporting material: Chapter 1-4 of X. Zhu. PhD thesis, 2005. |
|
18.05.2016 | Are Jensen |
Lab on graphs and segmentation |
||
08.06.2016 | Anne Solberg Are Jensen |
Repetition | Note the updated date! | |
15.06.2016 | Room Shell (1456) | The schedule for the exam day is sent by e-mail. |