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Re-Ranking Approach of Spoken Term Detection Using Conditional Random Fields-Based Triphone Detection

机译:基于条件随机场的三音素检测的语音术语检测的重新排序方法

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This study proposes a two-pass spoken term detection (STD) method. The first pass uses a phoneme-based dynamic time warping (DTW)-based STD, and the second pass recomputes detection scores produced by the first pass using conditional random fields (CRF)-based triphone detectors. In the second-pass, we treat STD as a sequence labeling problem. We use CRF-based triphone detection models based on features generated from multiple types of phoneme-based transcriptions. The models train recognition error patterns such as phoneme-to-phoneme confusions in the CRF framework. Consequently, the models can detect a triphone comprising a query term with a detection probability. In the experimental evaluation of two types of test collections, the CRF-based approach worked well in the re-ranking process for the DTW-based detections. CRF-based re-ranking showed 2.1% and 2.0% absolute improvements in F-measure for each of the two test collections.
机译:这项研究提出了一种两遍口语项检测(STD)方法。第一遍使用基于音素的动态时间规整(DTW)STD,第二遍使用基于条件随机场(CRF)的三音检测器重新计算第一遍产生的检测分数。在第二遍中,我们将STD视为序列标记问题。我们使用基于多种基于音素的转录类型生成的特征的基于CRF的三音检测模型。这些模型训练识别错误模式,例如CRF框架中的音素对音素混淆。因此,模型可以以检测概率检测包括查询词的三音素。在对两种类型的测试集进行实验评估时,基于CRF的方法在基于DTW的检测的重新排序过程中效果很好。基于CRF的重新排名显示,两个测试集合中的每一个的F值绝对提高2.1%和2.0%。

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