Fast Transformation-Invariant Factor Analysis

Kannan, Anitha, Jojic, Nebojsa, Frey, Brendan

Neural Information Processing Systems 

Dimensionality reduction techniques such as principal component analysis and factor analysis are used to discover a linear mapping between high dimensional data samples and points in a lower dimensional subspace. In [6], Jojic and Frey introduced mixture of transformation-invariant component analyzers (MTCA) that can account for global transformations such as translations and rotations, perform clustering and learn local appearance deformations by dimensionality reduction.

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