基于知识的大型语音数据库自动标注方法

J. Junqua, H. Wakita
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引用次数: 2

摘要

作者描述了一种基于感知线索、光谱动力学和各种知识来源的新型自动分割系统:启发式、语音和超分割。由于不使用参考单元,该方法可以直接应用于语音识别。背板模型的模块化和开放性促进了从一个应用程序到另一个应用程序的转换。与文献中提出的其他分割方法相比,该方法具有几个优点:它基于开放和模块化架构;基于感知的线性预测分析产生的平滑谱限制了假段;确定过渡的算法不使用阈值,因此与说话人无关;该系统不需要参考单位;语音知识的引入主要是针对疑难案例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A knowledge based approach for automatic labeling of a large speech database
The authors describe a novel automatic segmentation system based on perceptual cues, spectral dynamics, and various sources of knowledge: heuristic, phonetic, and suprasegmental. Because no reference units are used, the method can be directly applied to speech recognition. The passage from one application to another is facilitated by the modularity and openness given by the backboard model. This method has several advantages over other segmentation methods presented in the literature: it is based on an open and modular architecture; the smooth spectrum yielded by the perceptually based linear prediction analysis limits spurious segments; the algorithm which determines the transitions uses no threshold and thus is speaker independent; the system does not require reference units; and the introduction of phonetic knowledge deals mostly with the difficult cases.<>
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