6533b85afe1ef96bd12b94cb
RESEARCH PRODUCT
Complex-Valued Independent Component Analysis of Natural Images
Aapo HyvärinenJesús MaloMichael U. GutmannValero Laparrasubject
Uniform distribution (continuous)business.industryPhase (waves)Pattern recognitionSimple cellComplex cellIndependent component analysismedicine.anatomical_structureComponent analysisComputer Science::SoundReceptive fieldmedicineArtificial intelligenceLinear independencebusinessMathematicsdescription
Linear independent component analysis (ICA) learns simple cell receptive fields fromnatural images. Here,we showthat linear complex-valued ICA learns complex cell properties from Fourier-transformed natural images, i.e. two Gabor-like filters with quadrature-phase relationship. Conventional methods for complex-valued ICA assume that the phases of the output signals have uniform distribution. We show here that for natural images the phase distributions are, however, often far from uniform. We thus relax the uniformity assumption and model also the phase of the sources in complex-valued ICA. Compared to the original complex ICA model, the new model provides a better fit to the data, and leads to Gabor filters of qualitatively different shape.
year | journal | country | edition | language |
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2011-01-01 |