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A keyword-aware grammar framework for LVCSR-based spoken keyword search

机译:基于LVCSR的语言关键词搜索的关键字感知语法框架

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In this paper, we proposed a method to realize the recently developed keyword-aware grammar for LVCSR-based keyword search using weight finite-state automata (WFSA). The approach creates a compact and deterministic grammar WFSA by inserting keyword paths to an existing n-gram WFSA. Tested on the evalpart1 data of the IARPA Babel OpenKWS13 Vietnamese and OpenKWS14 Tamil limited language pack tasks, the experimental results indicate the proposed keyword-aware framework achieves significant improvement, with about 50% relative actual term weighted value (ATWV) enhancement for both languages. Comparisons between the keyword-aware grammar and our previously proposed n-gram LM based approximation approach for the grammar also show that the KWS performances of these two realizations are complementary.
机译:在本文中,我们提出了一种使用权重有限状态自动机(WFSA)来实现最近开发的基于LVCSR的关键字搜索的方法的方法。该方法通过将关键字路径插入现有的N-GRAM WFSA来创建一个紧凑和确定的语法WFSA。在IARPA Babel OpenKWS13越南和OpenKWS14泰米尔有限的语言包任务中测试了测试,实验结果表明,所提出的关键字感知框架实现了显着的改进,具有大约50%的相对实际术语加权值(ATWV)两种语言的增强。关键字知识语法与我们先前提出的基于N-GRAM LM的基于N-GRM LM的比较也表明这两种实现的KWS表现是互补的。

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