ALBAYZIN 2018 spoken term detection evaluation: a multi-domain international evaluation in Spanish

被引:0
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作者
Javier Tejedor
Doroteo T. Toledano
Paula Lopez-Otero
Laura Docio-Fernandez
Ana R. Montalvo
Jose M. Ramirez
Mikel Peñagarikano
Luis Javier Rodriguez-Fuentes
机构
[1] Fundación Universitaria San Pablo CEU,Escuela Politécnica Superior
[2] Universidad Autónoma de Madrid,AUDIAS
[3] CITIC,Universidade da Coruña, IRLab
[4] AtlantTIC Research Center,Multimedia Technologies Group (GTM)
[5] Advanced Technologies Application Center (CENATAV),Voice Group
[6] Universidad del País Vasco,Software Technology Working Group (GTTS)
关键词
Search on speech; Spoken term detection; Spanish; International evaluation;
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学科分类号
摘要
Search on speech (SoS) is a challenging area due to the huge amount of information stored in audio and video repositories. Spoken term detection (STD) is an SoS-related task aiming to retrieve data from a speech repository given a textual representation of a search term (which can include one or more words). This paper presents a multi-domain internationally open evaluation for STD in Spanish. The evaluation has been designed carefully so that several analyses of the main results can be carried out. The evaluation task aims at retrieving the speech files that contain the terms, providing their start and end times, and a score that reflects the confidence given to the detection. Three different Spanish speech databases that encompass different domains have been employed in the evaluation: the MAVIR database, which comprises a set of talks from workshops; the RTVE database, which includes broadcast news programs; and the COREMAH database, which contains 2-people spontaneous speech conversations about different topics. We present the evaluation itself, the three databases, the evaluation metric, the systems submitted to the evaluation, the results, and detailed post-evaluation analyses based on some term properties (within-vocabulary/out-of-vocabulary terms, single-word/multi-word terms, and native/foreign terms). Fusion results of the primary systems submitted to the evaluation are also presented. Three different research groups took part in the evaluation, and 11 different systems were submitted. The obtained results suggest that the STD task is still in progress and performance is highly sensitive to changes in the data domain.
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