Machine Learning for Computer Vision


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Detailed ICVSS 2009 Programme
Lectures
Speakers
Syllabus
Titles & Abstracts

Michael Black
Brown University, USA
Review of traditional 3D body tracking,
3D bodies from 2D pictures, body shape estimation.

Andrew Fitzgibbon
Microsoft Research Ltd, Cambridge, UK
Bayes, priors, MAP estimation, Markov random fields, image-based rendering, new-view synthesis, stereo, shape from silhouette

David Forsyth
University of Illinois at
Urbana-Champaign, USA
Methods for reasoning about relations between words and pictures.

Zoubin Ghahramani
University of Cambridge, UK
Probabilistic approaches, Bayesian machine learning and AI, approximation and nonparametrics algorithms.

Dan Huttenlocher
Cornell University, USA

Object Category Recognition, Relational Models, Scene Context, Distance Transforms, Viterbi Algorithm, Generative and Discriminative Learning.


Takeo Kanade
Carnegie Mellon University, USA
Computer Vision and Machine Learning: the past, the present, and the future

Stefano Soatto
UCLA, USA
Visual representation, learning, invariance, sufficient statistics, entropy, coding length.
Advanced Tutorials
Speakers
Syllabus
Titles & Abstracts

Nello Cristianini
University of Bristol, UK

Linear Pattern Functions, Non-linear Patterns via kernel functions,
Statistical learning theory,
Optimization Theory, Various kernel based algorithms, Various kernel functions, Examples.

Rob Fergus
New York University, USA

Large scale computer vision,
Internet vision,
Distance metric learning,
Hashing techniques.

Pushmeet Kohli
Microsoft Research Ltd, Cambridge, UK
St-Mincut, Maxflow, Submodular functions, Labelling Problems, Image Segmentation, Object Recognition.

Tae-Kyun Kim
University of Cambridge, UK
Boosting, mixture of experts, multiple classifier learning, Random forest, locally linear models, object recognition, tracking, class segmentation

John Winn
Microsoft Research Ltd, Cambridge, UK

Probabilistic models, graphical models,
generative vs. discriminative models,
Bayesian inference.
Reading Group - with prize!
The prize was assigned to:
Mihoko Shimano, University of Tokyo, Japan
Speakers
Titles, Abstracts, Homework, Syllabus

Stefano Soatto
UCLA, USA
Industrial and Demo Session
Speakers
Syllabus
Titles & Abstracts

Dariu Gavrila
Daimler Research and University of Amsterdam
Intelligent vehicles, pedestrian detection, benchmarking, multi-cue object recognition.

Matthew Johnson
Nokia Point and Find
San Francisco, USA
Real-time computer vision, object recognition, ubiquitous computing, embedded devices

Björn Stenger
Toshiba Research Europe Ltd,
Cambridge, UK
Multi-cue Tracking, HCI

For more information, send an email to: icvss@dmi.unict.it