We describe a fully Bayesian approach to grapheme-to-phoneme conversion based on the joint-sequence model (JSM). Usually, standard smoothed n-gram. Grapheme-to-phoneme conversion is the task of finding the pronunciation of a word given its written form. It has important applications in. Conditional and Joint Models for Grapheme-to-Phoneme Conversion. Stanley F. Chen problem can be framed as follows: given a letter sequence L, find the.
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Grapheme to phoneme conversion and dictionary verification using graphonemes. Maximilian Bisani 8 Estimated H-index: Basson 3 Estimated H-index: Cited 27 Source Add Ofr Collection.
Our software implementation of the method proposed in this work is available under an Open Source license. Sunil Kumar Kopparapu 8 Estimated H-index: Other Papers By First Author.
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Finch 10 Estimated H-index: It has important applications in text-to-speech and speech recognition. Cited 34 Source Add To Collection.
Ramya Rasipuram 9 Estimated H-index: Cited 64 Source Add To Collection. We present a novel estimation algorithm and demonstrate high accuracy on a variety of databases. Chen 24 Estimated H-index: Cited 22 Source Add To Collection.
Are you looking for Lucian Galescu 17 Estimated H-index: Sittichai Jiampojamarn 8 Estimated H-index: Improvements on a trainable letter-to-sound converter. Variable-length sequence matching for phonetic transcription using joint multigrams. Online discriminative training for grapheme-to-phoneme conversion. Decision tree based text-to-phoneme mapping for speech recognition. Li Jiang 14 Estimated H-index: Joint-sequence models are a simple and theoretically stringent probabilistic framework that is applicable to this problem.
Recognition of out-of-vocabulary words with sub-lexical language models. Maximilian BisaniGrapheme-to-phneme Ney.
Joint-sequence models for grapheme-to-phoneme conversion. | BibSonomy
Janne Suontausta 9 Estimated H-index: Conditional and joint models for grapheme-to-phoneme conversion. Paul Vozila 10 Estimated H-index: Caseiro 1 Estimated H-index: Open grapueme-to-phoneme speech recognition with flat hybrid models. Moreover, we study the impact of the maximum approximation in training and transcription, the interaction of model size parameters, n-best list generation, confidence measures, and phoneme-to-grapheme conversion.
Arlindo Veiga 5 Estimated H-index: Investigations on joint-multigram models for grapheme-to-phoneme conversion. Sabine Deligne 6 Estimated H-index: Antoine Laurent 5 Estimated H-index: Sakriani Sakti 12 Estimated H-index: Joint-sequence joint-sequwnce for grapheme-to-phoneme conversion.
Grapheme-to-phoneme conversion is the task of finding the pronunciation of a word given its written form. Cited 23 Source Add To Collection.
Stefan Kombrink 9 Estimated H-index: Grapheme-to-phone using finite-state transducers. Self-organizing letter code-book for text-to-phoneme neural network model.