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首页> 外文期刊>International Journal of Advanced Robotic Systems >Spoken Document Retrieval Based on Confusion Network with Syllable Fragments
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Spoken Document Retrieval Based on Confusion Network with Syllable Fragments

机译:用音节碎片的混淆网络进行语音文档检索

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摘要

This paper addresses the problem of spoken document retrieval under noisy conditions by incorporating sound selection of a basic unit and an output form of a speech recognition system. Syllable fragment is combined with a confusion network in a spoken document retrieval task. After selecting an appropriate syllable fragment, a lattice is converted into a confusion network that is able to minimize the word error rate instead of maximizing the whole sentence recognition rate. A vector space model is adopted in the retrieval task where tf-idf weights are derived from the posterior probability. The confusion network with syllable fragments is able to improve the mean of average precision (MAP) score by 0.342 and 0.066 over one-best scheme and the lattice.
机译:本文通过结合基本单元的声音选择和语音识别系统的输出形式,解决了嘈杂条件下的语音检索问题的问题。 音节片段与口头文档检索任务中的混淆网络相结合。 在选择合适的音节片段之后,将晶格转换为能够最小化单词误差率的混淆网络,而不是最大化整个句子识别率。 在检索任务中采用了矢量空间模型,其中TF-IDF权重来自后验概率。 具有音节片段的混淆网络能够通过一个最佳方案和晶格提高平均精度(地图)得分的平均精度(MAP)分数。

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