Subspace (Manifold) learning Theory: PCA Applications: Eigen faces, Active Shape & Active Appearance Models. Additional topics: kernel PCA, LLE
Boundary Detection Theory: Calculus of variations Applications: Mumford-Shah functional, snakes, level sets
EM Theory: EM algorithm Applications: segmentation, tracking
Graph algorithms Theory: Graph cut algorithms Applications: segmentation, stereo
Clustering Theory: hierarchical, k-means, spectral Applications: grouping in images
Graphical Models Theory: MRFs, inference in graphical models Applications: regularization, part/layer models
Shape descriptors Shape context, SIFT Medial axis, skeletons
Transformations and their manipulation Theory: diffeomorphisms, splines Applications: shape representation, registration
Information Theoretic Methods Theory: entropy and mutual information Application: alignment, segmentation
Classification Theory: nearest neighbor, perceptron, Fisher Linear Discriminant, SVMs, Ada Boosting Applications: object detection/recognition
This reading seminar aims to build up the mathematical background necessary to read papers and follow modern research in computer vision, as well as to improve communication skills, such as presenting research work, reviewing papers, surveying a field.
Everyone participating in the class must read the papers and come to class with questions on the assigned paper and on how it relates to other methods that attempt to solve the same problem.
Everyone will also be expected to present one or two papers during the semester and lead the discussion after the presentation.
ACTIVITIES | PERCENTAGES |
---|---|
Method/Paper Presentations | 40% |
Participation in the Discussions | 20% |
Final Paper and Presentation (Project or Analysis Paper) | 30% |
Paper Review | 10% |