Abstract / truncated to 115 words (read the full abstract)

One desideratum in designing cognitive robots is autonomous learning of communication skills, just like humans. The primary step towards this goal is vocabulary acquisition. Being different from the training procedures of the state-of-the-art automatic speech recognition (ASR) systems, vocabulary acquisition cannot rely on prior knowledge of language in the same way. Like what infants do, the acquisition process should be data-driven with multi-level abstraction and coupled with multi-modal inputs. To avoid lengthy training efforts in a word-by-word interactive learning process, a clever learning agent should be able to acquire vocabularies from continuous speech automatically. The work presented in this thesis is entitled \emph{Constrained Non-negative Matrix Factorization for Vocabulary Acquisition from Continuous Speech}. Enlightened by the ... toggle 7 keywords

non-negative matrix factorization bag-of-features unsupervised learning data mining speech representation vocabulary acquisition spoken term discovery

Information

Author
Sun, Meng
Institution
Katholieke Universiteit Leuven
Supervisor
Publication Year
2012
Upload Date
Nov. 5, 2012

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