Course Content :-
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Two-dimensional visual geometry :-
2d transformation family. The homograph. Estimating 2d transformations. Image panoramas.
- dimensional image geometry :-
The projective camera. Camera calibration. Recovering pose to a plane.
- More than one camera :-
The fundamental and essential matrices. Sparse stereo methods. Rectification. Building 3D models. Shape from silhouette.
- Vision at a single pixel :-
Background subtraction and color segmentations problems. Parametric, non-parametric and semi-parametric techniques. Fitting models with hidden variables.
- Connecting pixels :-
Dynamic programming for stereo vision. Markov random fields. MCMC methods. Graph cuts.
- Texture :-
Texture synthesis, super-resolution and denoising, image inpainting. The epitome of an image.
- Dense Object Recognition :-
Modeling covariance of pixel regions. Factor analysis and principle components analysis.
- Sparse Object Recognition :-
Bag of words, latent dirilecht allocation, probabilistic latent semantic analysis.
- Face Recognition :-
- Probabilistic approaches to identity recognition.
- Face recognition in disparate viewing conditions.
- Shape Analysis :-
Point distribution models, active shape models, active appearance models.
- Tracking :-
The Kalman filter.