寻找丢失的碎片[语音识别]

W. N. Choi, Y. W. Wong, T. Lee, P. Ching
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引用次数: 0

摘要

在连续语音识别中,树格前向后向算法被广泛应用于n -最优搜索。在传统方法中,用于A*向后搜索的启发式分数是从向前传递期间记录的部分路径分数中派生出来的。在词汇树结构中,语言模型固有的延迟使用导致了低效的修剪,并且记录的部分路径分数是一个被低估的启发式分数。本文提出了一种计算启发式分数的新方法,该方法比部分路径分数更准确。目标是恢复高分句子假设,这些假设可能在前向搜索过程中由于LM的延迟使用而被中途修剪。对于香港股票信息查询的应用,所提出的技术显示出明显的性能改进。特别是,排名前1的句子的相对错误率降低了12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Searching for the missing piece [speech recognition]
The tree-trellis forward-backward algorithm has been widely used for N-best searching in continuous speech recognition. In conventional approaches, the heuristic score used for the A* backward search is derived from the partial-path scores recorded during the forward pass. The inherently delayed use of a language model in the lexical tree structure leads to inefficient pruning and the partial-path score recorded is an underestimated heuristic score. This paper presents a novel method of computing the heuristic score that is more accurate than the partial-path score. The goal is to recover high-score sentence hypotheses that may have been pruned halfway during the forward search due to the delayed use of the LM. For the application of Hong Kong stock information inquiries, the proposed technique shows a noticeable performance improvement. In particular, a relative error-rate reduction of 12% has been achieved for top-1 sentences.
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