改进的基于条件随机场近似匹配的词汇独立搜索

U. Chaudhari, M. Picheny
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引用次数: 6

摘要

我们研究了使用条件随机场(CRF)来模拟混淆并解释自动语音识别输出中派生的语音解码中的错误。目标是在一个独立于词汇的音频搜索系统中,在给定查询词和索引数据库的情况下,提高近似语音匹配的准确性。音频数据被摄取、分割、解码以产生电话序列,随后使用电话N-grams进行索引。通过将查询扩展到电话序列并根据索引进行匹配来执行搜索。近似匹配分数来自于在平行转录本上训练的CRF,它为将上下文影响考虑在内的识别系统可能产生的错误建模提供了一个通用框架。我们的方法与该领域的其他工作不同,因为我们专注于使用crf来建模依赖于上下文的电话级别混淆,而不是明确地建模编辑距离的参数。虽然我们在词汇内外(OOV)搜索任务上获得的结果比之前包含高阶电话混淆的工作有所改善,但OOV的收益更令人印象深刻。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved vocabulary independent search with approximate match based on Conditional Random Fields
We investigate the use of Conditional Random Fields (CRF) to model confusions and account for errors in the phonetic decoding derived from Automatic Speech Recognition output. The goal is to improve the accuracy of approximate phonetic match, given query terms and an indexed database of documents, in a vocabulary independent audio search system. Audio data is ingested, segmented, decoded to produce a sequence of phones, and subsequently indexed using phone N-grams. Search is performed by expanding queries into phone sequences and matching against the index. The approximate match score is derived from a CRF, trained on parallel transcripts, which provides a general framework for modeling the errors that a recognition system may make taking contextual effects into consideration. Our approach differs from other work in the field in that we focus on using CRFs to model context dependent phone level confusions, rather than on explicitly modeling parameters of an edit distance. While, the results we obtain on both in and out of vocabulary (OOV) search tasks improve on previous work which incorporated high order phone confusions, the gains for OOV are more impressive.
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