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Linear discriminant based sound class similarities with unit value normalization

机译:基于线性判别的声音类别相似度与单位值归一化

摘要

A common requirement in automatic speech recognition is to recognize a set of words for any speaker without training the system for each new speaker. A speech recognition system is provided utilizing linear discriminant based phonetic similarities with inter-phonetic unit value normalization. Linear discriminant analysis is utilized using training data with both in-class and out-class sample training utterances for generating linear discriminant vectors for each of the phonetic units. The dot product of each linear discriminant vector and the time spectral pattern vectors generated from the input speech are computed. The resultant raw similarity vectors are then normalized utilizing normalization look-up tables for providing similarity vectors which are utilized by a word matcher for word recognition.
机译:自动语音识别的一个普遍要求是,无需培训每个新说话者的系统,即可为任何说话者识别一组单词。提供一种语音识别系统,该系统利用基于线性判别的语音相似度和语音间单位值归一化。线性判别分析是通过使用具有类内和类外样本训练话语的训练数据来进行的,以为每个语音单位生成线性判别向量。计算每个线性判别矢量和从输入语音生成的时间谱模式矢量的点积。然后,利用归一化查找表对所得的原始相似性矢量进行归一化,以提供由单词匹配器用于单词识别的相似性矢量。

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