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Discriminative confidence measure using linear combination of duration-based features and acoustic-based scores in keyword spotting

机译:使用基于持续时间的特征和基于声学的分数的线性组合在关键字点发现的辨别置信度量

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One of the most important steps in a keyword spotting (KWS) system is a post-processing procedure to compute a confidence measure (CM) for each hypothesized keyword. The CM is commonly estimated by likelihood-based acoustic scores. However durations of the detected keyword, which include useful information, has not been studied directly in the KWS systems. In this paper, three duration-based features are proposed for such system. Also, using linear discriminant analysis (LDA), the proposed duration-based features are discriminatively combined with the acoustic scores and used as the final discriminative CM (DCM) in the KWS system. The proposed DCM results up to 11.3% improvement in FOM against to the conventional likelihood-based CM over a Persian conversational telephone speech database.
机译:关键字拍摄(KWS)系统中最重要的步骤之一是为每个假设关键字计算置信度量(cm)的后处理过程。 CM通常通过基于似然的声学分数估计。 然而,没有直接在KWS系统中进行有用信息的检测到关键字的持续时间。 在本文中,提出了为这种系统提出了三个基于持续的特征。 此外,使用线性判别分析(LDA),所提出的基于持续时间的特征是差异地与声学分数相结合,并用作KWS系统中的最终鉴别厘米(DCM)。 提议的DCM在波斯对话语音数据库中导致FOM的改善高达11.3%。

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