Title of article :
Unsupervised image classification, segmentation, and enhancement using ICA mixture models
Author/Authors :
Te-Won Lee، نويسنده , , Lewicki، نويسنده , , M.S.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2002
Abstract :
An unsupervised classification algorithm is derived
by modeling observed data as a mixture of several mutually exclusive
classes that are each described by linear combinations of
independent, non-Gaussian densities. The algorithm estimates the
data density in each class by using parametric nonlinear functions
that fit to the non-Gaussian structure of the data. This improves
classification accuracy compared with standard Gaussian mixture
models. When applied to images, the algorithm can learn efficient
codes (basis functions) for images that capture the statistically significant
structure intrinsic in the images. We apply this technique
to the problem of unsupervised classification, segmentation, and
denoising of images. We demonstrate that this method was effective
in classifying complex image textures such as natural scenes
and text. It was also useful for denoising and filling in missing
pixels in images with complex structures. The advantage of this
model is that image codes can be learned with increasing numbers
of classes thus providing greater flexibility in modeling structure
and in finding more image features than in either Gaussian mixture
models or standard independent component analysis (ICA)
algorithms.
Keywords :
Gaussian mixture model , Blind source separation , independent componentanalysis , fill-in missingdata , maximum likelihood , unsupervisedclassification. , segmentation , Image coding , Denoising
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING
Journal title :
IEEE TRANSACTIONS ON IMAGE PROCESSING