ALBAYZIN Query-by-example Spoken Term Detection 2016 evaluation

被引:0
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作者
Javier Tejedor
Doroteo T. Toledano
Paula Lopez-Otero
Laura Docio-Fernandez
Jorge Proença
Fernando Perdigão
Fernando García-Granada
Emilio Sanchis
Anna Pompili
Alberto Abad
机构
[1] Universidad San Pablo-CEU,Escuela Politécnica Superior
[2] CEU Universities,Multimedia Technologies Group (GTM), AtlantTIC Research Center, E. E. Telecomunicación
[3] Campus de Montepríncipe,Instituto de Telecomunicações, Department of Electrical and Computer Engineering
[4] AuDIaS,ELiRF
[5] Universidad Autónoma de Madrid, Departament de Sistemes Informàtics i Computació
[6] Universidade da Coruña,L2F
[7] IRLab, Spoken Language Systems Lab, INESC
[8] CITIC,ID, IST
[9] Campus Universitario de Vigo, Instituto Superior Técnico
[10] s/n,undefined
[11] University of Coimbra,undefined
[12] Universitat Politècnica de València,undefined
[13] University of Lisbon,undefined
关键词
Query-by-example Spoken Term Detection; International evaluation; Spanish; Search on spontaneous speech;
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摘要
Query-by-example Spoken Term Detection (QbE STD) aims to retrieve data from a speech repository given an acoustic (spoken) query containing the term of interest as the input. This paper presents the systems submitted to the ALBAYZIN QbE STD 2016 Evaluation held as a part of the ALBAYZIN 2016 Evaluation Campaign at the IberSPEECH 2016 conference. Special attention was given to the evaluation design so that a thorough post-analysis of the main results could be carried out. Two different Spanish speech databases, which cover different acoustic and language domains, were used in the evaluation: the MAVIR database, which consists of a set of talks from workshops, and the EPIC database, which consists of a set of European Parliament sessions in Spanish. We present the evaluation design, both databases, the evaluation metric, the systems submitted to the evaluation, the results, and a thorough analysis and discussion. Four different research groups participated in the evaluation, and a total of eight template matching-based systems were submitted. We compare the systems submitted to the evaluation and make an in-depth analysis based on some properties of the spoken queries, such as query length, single-word/multi-word queries, and in-language/out-of-language queries.
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