Nos_ParlaSpeech-GL: Galician ASR corpus

  1. Carmen Magariños 1
  2. Adrián Vidal Miguéns 1
  3. Adina Ioana Vladu 1
  4. Noelia García Díaz 1
  5. Marta Vázquez Abuín 1
  6. Ainhoa Vivel Couso 1
  7. Daniel Bardanca 1
  8. Elisa Fernández Rei 1
  1. 1 Universidade de Santiago de Compostela
    info

    Universidade de Santiago de Compostela

    Santiago de Compostela, España

    ROR https://ror.org/030eybx10

Editor: Zenodo

Ano de publicación: 2023

Tipo: Dataset

Resumo

Nos_ParlaSpeech-GL is an ASR corpus of more than 1,600 hours of automatically aligned speech and text, created from audio and official transcripts of Galician parliamentary sessions celebrated between 2015 and 2022. The content belongs to the Galician Parliament and the data is released according to their terms of use. The corpus is split into two subcorpora, "clean" and "other". The segments included in the "clean" subcorpus were filtered according to several alignment quality criteria, whereas the "other" subcorpus comprises the segments that were discarded in the filtering process. The details of both subcorpora can be found in the table below: Subcorpus No. of hours No. of segments Clean       1,196.92   667,308 Other   477.71 130,332 Total     1674,63       797,64   Moreover, each speech segment is tagged with the ID of its corresponding speaker. Metadata of the different speakers, compiled within the ParlaMint-GL project, can be accessed here. The file naming scheme of the audio files consists of an ID comprising: a four-letter code in capitals denoting the source of the data (Minutes of the Galician Parliament), followed by a 3-digit number identifying the session number and an 8-digit date number in the DDMMYYYY format, all separated by underscores (e. g., DSPG_095_27012015.wav). For the transcription files, this ID is preceded, separated by an underscore, by the word indicating the subcorpus to which the file belongs to: "clean" or "other" (e. g., clean_DSPG_095_27012015.stm, other_DSPG_095_27012015.stm). The corpus is available in STM and JSON formats, and the audio files are released in 16 kHz 16-bit WAV format. Disclaimer: We are not responsible for any inconsistencies in speaker identification that stem from misidentification in the original transcripts. Funding and acknowledgements: This corpus was compiled in collaboration with VICOMTECH. "The Nós project: Galician in the society and economy of Artificial Intelligence" is possible thanks to the funding resulting from the agreement 2021-CP080 between the Xunta de Galicia and the University of Santiago de Compostela, and thanks to the Investigo program, within the National Recovery, Transformation and Resilience Plan, within the framework of the European Recovery Fund (NextGenerationEU). We would like to thank the Galician Parliament for their kind collaboration in providing the original data. For more information, please go to https://nos.gal/  or contact the Nós project at proxecto.nos@usc.gal.