Cross-site combination and evaluation of subword spoken term detection systems

Timo Mertens, R. Wallace, Daniel Schneider
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引用次数: 6

Abstract

The design and evaluation of subword-based spoken term detection (STD) systems depends on various factors, such as language, type of the speech to be searched and application scenario. The choice of the subword unit and search approach, however, is oftentimes made regardless of these factors. Therefore, we evaluate two subword STD systems across two data sets with varying properties to investigate the influence of different subword units on STD performance when working with different data types. Results show that on German broadcast news data, constrained search in syllable lattices is effective, whereas fuzzy phone lattice search is superior in more challenging English conversational telephone speech. By combining the key features of the two systems at an early stage, we achieve improvements in Figure of Merit of up to 13.4% absolute on the German data. We also show that the choice of the appropriate evaluation metric is crucial when comparing retrieval performances across systems.
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子词口语词检测系统的跨站点组合与评价
基于子词的口语术语检测系统的设计和评价取决于多种因素,如语言、要搜索的语音类型和应用场景。然而,子词单位和搜索方法的选择通常不考虑这些因素。因此,我们在两个具有不同属性的数据集上评估两个子词STD系统,以研究不同子词单元在处理不同数据类型时对STD性能的影响。结果表明,在德语广播新闻数据中,音节格约束搜索是有效的,而模糊电话格搜索在更具挑战性的英语会话电话语音中更优越。通过在早期阶段结合两个系统的主要特征,我们在德国数据上实现了高达13.4%的绝对改进。我们还表明,在比较跨系统的检索性能时,选择适当的评估度量是至关重要的。
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