Jürgen Schmidhuber1
IDSIA
Martin Eldracher
IDSIA
6900 Lugano, Switzerland
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Bernhard Foltin
TUM
Predictability minimization (PM -- Schmidhuber, 1992) exhibits various intuitive and theoretical advantages over many other methods for unsupervised redundancy reduction. So far, however, there were only toy applications of PM. In this paper, we apply semilinear PM to static real world images and find: without a teacher and without any significant pre-processing, the system automatically learns to generate distributed representations based on well-known feature detectors, such as orientation sensitive edge detectors and off-center-on-surround-like structures, thus extracting simple features related to those considered useful for image pre-processing and compression.