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Modeling speech localization, talker identification, and word recognition in a multi-talker setting

机译:在多讲话者设置中建模语音定位,谈话者识别和词识别

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This study introduces a model for solving three different auditory tasks in a multi-talker setting: target localization, target identification, and word recognition. The model was used to simulate psychoacoustic data from a call-sign-based listening test involving multiple spatially separated talkers [ Brungart and Simpson (2007). Percept. Psychophys. 69(1), 79-91]. The main characteristics of the model are (i) the extraction of salient auditory features ("glimpses") from the multi-talker signal and (ii) the use of a classification method that finds the best target hypothesis by comparing feature templates from clean target signals to the glimpses derived from the multi-talker mixture. The four features used were periodicity, periodic energy, and periodicity-based interaural time and level differences. The model results widely exceeded probability of chance for all subtasks and conditions, and generally coincided strongly with the subject data. This indicates that, despite their sparsity, glimpses provide sufficient information about a complex auditory scene. This also suggests that complex source superposition models may not be needed for auditory scene analysis. Instead, simple models of clean speech may be sufficient to decode even complex multi-talker scenes. (C) 2017 Author(s).
机译:本研究介绍了一种在多讲话者设置中解决三种不同听觉任务的模型:目标本地化,目标识别和字识别。该模型用于模拟来自涉及多个空间分离的讲话者的基于呼叫符号的听力测试的精神声学数据[Brungart和Simpson(2007)。感知。心理学家。 69(1),79-91]。模型的主要特征是(i)从多讲话者信号和(ii)通过比较清洁目标的特征模板来使用分类方法的突出听觉特征(“瞥见”)的提取向衍生自多讲车混合物的瞥见的信号。所使用的四个特征是周期性,周期性和周期性的间隔时间和水平差异。模型结果广泛超出了所有子特和条件的机会概率,并且通常与主题数据强烈相互作用。这表明,尽管它们的稀疏性,但瞥见提供了有关复杂听觉场景的足够信息。这也表明听觉场景分析可能不需要复杂的源叠加模型。相反,简单的清洁语音模型可能足以解码甚至复杂的多讲话者场景。 (c)2017年作者。

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