2024
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Collecting Linguistic Resources for Assessing Children’s Pronunciation of Nordic Languages
Anne Marte Haug Olstad
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Anna Smolander
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Sofia Strömbergsson
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Sari Ylinen
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Minna Lehtonen
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Mikko Kurimo
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Yaroslav Getman
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Tamás Grósz
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Xinwei Cao
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Torbjørn Svendsen
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Giampiero Salvi
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
This paper reports on the experience collecting a number of corpora of Nordic languages spoken by children. The aim of the data collection is providing annotated data to develop and evaluate computer assisted pronunciation assessment systems both for non-native children learning a Nordic language (L2) and for L1 children with speech sound disorder (SSD). The paper presents the challenges encountered recording and annotating data for Finnish, Swedish and Norwegian, as well as the ethical considerations related with making this data publicly available. We hope that sharing this experience will encourage others to collect similar data for other languages. Of the different data collections, we were able to make the Norwegian corpus publicly available in the hope that it will serve as a reference in pronunciation assessment research.
2023
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A character-based analysis of impacts of dialects on end-to-end Norwegian ASR
Phoebe Parsons
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Knut Kvale
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Torbjørn Svendsen
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Giampiero Salvi
Proceedings of the 24th Nordic Conference on Computational Linguistics (NoDaLiDa)
We present a method for analyzing character errors for use with character-based, end-to-end ASR systems, as used herein for investigating dialectal speech. As end-to-end systems are able to produce novel spellings, there exists a possibility that the spelling variants produced by these systems can capture phonological information beyond the intended target word. We therefore first introduce a way of guaranteeing that similar words and characters are paired during alignment, thus ensuring that any resulting analysis of character errors is founded on sound substitutions. Then, from such a careful character alignment, we find trends in system-generated spellings that align with known phonological features of Norwegian dialects, in particular, “r” and “l” confusability and voiceless stop lenition. Through this analysis, we demonstrate that cues from acoustic dialectal features can influence the output of an end-to-end ASR systems.
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Improving Generalization of Norwegian ASR with Limited Linguistic Resources
Per Erik Solberg
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Pablo Ortiz
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Phoebe Parsons
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Torbjørn Svendsen
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Giampiero Salvi
Proceedings of the 24th Nordic Conference on Computational Linguistics (NoDaLiDa)
With large amounts of training data, it is possible to train ASR models that generalize well across speakers and domains. But how do you train robust models when there is a limited amount of available training data? In the experiments reported here, we fine-tuned a pre-trained wav2vec2 ASR model on two transcribed, Norwegian speech datasets, one with parliamentary speech and one with radio recordings, as well as on combinations of the two datasets. We subsequently tested these models on different test sets with planned and unplanned speech and with speakers of various dialects. Our results show that models trained on combinations of the two datasets generalize better to new data than the single-dataset models, even when the length of the training data is the same. Our lexical analysis sheds light on the type of mistakes made by the models and on the importance of consistent standardization when training combined models of this kind.
2014
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Free Acoustic and Language Models for Large Vocabulary Continuous Speech Recognition in Swedish
Niklas Vanhainen
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Giampiero Salvi
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)
This paper presents results for large vocabulary continuous speech recognition (LVCSR) in Swedish. We trained acoustic models on the public domain NST Swedish corpus and made them freely available to the community. The training procedure corresponds to the reference recogniser (RefRec) developed for the SpeechDat databases during the COST249 action. We describe the modifications we made to the procedure in order to train on the NST database, and the language models we created based on the N-gram data available at the Norwegian Language Council. Our tests include medium vocabulary isolated word recognition and LVCSR. Because no previous results are available for LVCSR in Swedish, we use as baseline the performance of the SpeechDat models on the same tasks. We also compare our best results to the ones obtained in similar conditions on resource rich languages such as American English. We tested the acoustic models with HTK and Julius and plan to make them available in CMU Sphinx format as well in the near future. We believe that the free availability of these resources will boost research in speech and language technology in Swedish, even in research groups that do not have resources to develop ASR systems.
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The WaveSurfer Automatic Speech Recognition Plugin
Giampiero Salvi
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Niklas Vanhainen
Proceedings of the Ninth International Conference on Language Resources and Evaluation (LREC'14)
This paper presents a plugin that adds automatic speech recognition (ASR) functionality to the WaveSurfer sound manipulation and visualisation program. The plugin allows the user to run continuous speech recognition on spoken utterances, or to align an already available orthographic transcription to the spoken material. The plugin is distributed as free software and is based on free resources, namely the Julius speech recognition engine and a number of freely available ASR resources for different languages. Among these are the acoustic and language models we have created for Swedish using the NST database.
2000
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The COST 249 SpeechDat Multilingual Reference Recogniser
Finn Tore Johansen
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Narada Warakagoda
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Børge Lindberg
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Gunnar Lehtinen
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Zdravko Kačič
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Andrej Žgank
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Kjell Elenius
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Giampiero Salvi
Proceedings of the Second International Conference on Language Resources and Evaluation (LREC’00)