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Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data

This book covers language modeling and automatic speech recognition for inflective languages (e.g. Slavic languages), which represent roughly half of the languages spoken in Europe. These languages do not perform as well as English in speech recognition systems and it is therefore harder to develop...

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Detalles Bibliográficos
Autores principales: Donaj, Gregor, Kačič, Zdravko
Lenguaje:eng
Publicado: Springer 2017
Materias:
Acceso en línea:https://dx.doi.org/10.1007/978-3-319-41607-6
http://cds.cern.ch/record/2240276
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author Donaj, Gregor
Kačič, Zdravko
author_facet Donaj, Gregor
Kačič, Zdravko
author_sort Donaj, Gregor
collection CERN
description This book covers language modeling and automatic speech recognition for inflective languages (e.g. Slavic languages), which represent roughly half of the languages spoken in Europe. These languages do not perform as well as English in speech recognition systems and it is therefore harder to develop an application with sufficient quality for the end user. The authors describe the most important language features for the development of a speech recognition system. This is then presented through the analysis of errors in the system and the development of language models and their inclusion in speech recognition systems, which specifically address the errors that are relevant for targeted applications. The error analysis is done with regard to morphological characteristics of the word in the recognized sentences. The book is oriented towards speech recognition with large vocabularies and continuous and even spontaneous speech. Today such applications work with a rather small number of languages compared to the number of spoken languages. Concentrates on speech recognition for inflective languages – representative of roughly half of Europe -- and their unique characteristics Introduces new application-oriented methods for measuring the performance of a speech recognition system Presents examples of language modeling to maximize the performance of a speech recognition system Provides techniques for analyzing errors and identifying their sources in a speech recognition system from a lexical point of view rather than acoustic point of view.
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institution Organización Europea para la Investigación Nuclear
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spelling cern-22402762021-04-21T19:24:50Zdoi:10.1007/978-3-319-41607-6http://cds.cern.ch/record/2240276engDonaj, GregorKačič, ZdravkoLanguage modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical dataEngineeringThis book covers language modeling and automatic speech recognition for inflective languages (e.g. Slavic languages), which represent roughly half of the languages spoken in Europe. These languages do not perform as well as English in speech recognition systems and it is therefore harder to develop an application with sufficient quality for the end user. The authors describe the most important language features for the development of a speech recognition system. This is then presented through the analysis of errors in the system and the development of language models and their inclusion in speech recognition systems, which specifically address the errors that are relevant for targeted applications. The error analysis is done with regard to morphological characteristics of the word in the recognized sentences. The book is oriented towards speech recognition with large vocabularies and continuous and even spontaneous speech. Today such applications work with a rather small number of languages compared to the number of spoken languages. Concentrates on speech recognition for inflective languages – representative of roughly half of Europe -- and their unique characteristics Introduces new application-oriented methods for measuring the performance of a speech recognition system Presents examples of language modeling to maximize the performance of a speech recognition system Provides techniques for analyzing errors and identifying their sources in a speech recognition system from a lexical point of view rather than acoustic point of view.Springeroai:cds.cern.ch:22402762017
spellingShingle Engineering
Donaj, Gregor
Kačič, Zdravko
Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title_full Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title_fullStr Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title_full_unstemmed Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title_short Language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
title_sort language modeling for automatic speech recognition of inflective languages: an applications-oriented approach using lexical data
topic Engineering
url https://dx.doi.org/10.1007/978-3-319-41607-6
http://cds.cern.ch/record/2240276
work_keys_str_mv AT donajgregor languagemodelingforautomaticspeechrecognitionofinflectivelanguagesanapplicationsorientedapproachusinglexicaldata
AT kaciczdravko languagemodelingforautomaticspeechrecognitionofinflectivelanguagesanapplicationsorientedapproachusinglexicaldata