2007
DOI: 10.1109/ijcnn.2007.4371279
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Emergence of Language-Specific Phoneme Classifiers in Self-Organized Maps

Abstract: Abstract-The difference between self-organizing maps based phoneme classifiers that emerge for different input languages is studied. For each such language a self-organizing map is trained on Mel-Frequency Cepstral Coefficient (MFCC) converted auditory input to form a phoneme classifier. Unsupervised learning is used as the training method. The emerging classes are then compared to the classes found in the International Phonetic Alphabet. Particular class differences across languages and speakers are discussed… Show more

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“…Employing self-organizing computational models to assistive robots by taking inspiration from nature, enacts new perspectives that result in human-like decision-making capabilities [38,39]. By eliminating humans from the learning process, robots can directly learn from the data available.…”
Section: Need For Self-organization In Assistive Robotsmentioning
confidence: 99%
“…Employing self-organizing computational models to assistive robots by taking inspiration from nature, enacts new perspectives that result in human-like decision-making capabilities [38,39]. By eliminating humans from the learning process, robots can directly learn from the data available.…”
Section: Need For Self-organization In Assistive Robotsmentioning
confidence: 99%