Island-driven search using broad phonetic classes

Tara N. Sainath
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引用次数: 8

Abstract

Most speech recognizers do not differentiate between reliable and unreliable portions of the speech signal during search. As a result, most of the search effort is concentrated in unreliable areas. Island-driven search addresses this problem by first identifying reliable islands and directing the search out from these islands towards unreliable gaps. In this paper, we develop a technique to detect islands from knowledge of hypothesized broad phonetic classes (BPCs). Using this island/gap knowledge, we explore a method to prune the search space to limit computational effort in unreliable areas. In addition, we also investigate scoring less detailed BPC models in gap regions and more detailed phonetic models in islands. Experiments on both small and large scale vocabulary tasks indicate that our island-driven search strategy results in an improvement in recognition accuracy and computation time.
岛屿驱动搜索使用广泛的语音类
大多数语音识别器在搜索过程中不能区分语音信号的可靠部分和不可靠部分。因此,大部分搜索工作都集中在不可靠的地区。岛屿驱动搜索解决了这个问题,首先确定可靠的岛屿,并将搜索从这些岛屿引导到不可靠的空白。在本文中,我们开发了一种从假设的广义语音类(BPCs)知识中检测岛屿的技术。利用这种孤岛/间隙知识,我们探索了一种方法来修剪搜索空间,以限制不可靠区域的计算工作量。此外,我们还研究了在空白区域评分较不详细的BPC模型和在岛屿评分较详细的语音模型。在小型和大型词汇任务上的实验表明,我们的岛屿驱动搜索策略在识别精度和计算时间上都有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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