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Linear discriminant analysis for improved large vocabulary continuous speech recognition

机译:线性判别分析可改善大词汇量连续语音识别

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The interaction of linear discriminant analysis (LDA) and a modeling approach using continuous Laplacian mixture density HMM is studied experimentally. The largest improvements in speech recognition could be obtained when the classes for the LDA transform were defined to be sub-phone units. On a 12000 word German recognition task with small overlap between training and test vocabulary a reduction in error rate by one-fifth was achieved compared to the case without LDA. On the development set of the DARPA RM1 task the error rate was reduced by one-third. For the DARPA speaker-dependent no-grammar case, the error rate averaged over 12 speakers was 9.9%. This was achieved with a recognizer using LDA and a set of only 47 Viterbi-trained context-independent phonemes.
机译:实验研究了线性判别分析(LDA)和使用连续拉普拉斯混合密度HMM的建模方法之间的相互作用。当将LDA变换的类别定义为子电话单元时,可以获得语音识别的最大改进。与没有LDA的情况相比,在12000字的德语识别任务中,训练和测试词汇之间的重叠很小,错误率降低了五分之一。在DARPA RM1任务的开发套件上,错误率降低了三分之一。对于DARPA说话者相关的无语法情况,在12位说话者上的平均错误率是9.9%。这是通过使用LDA的识别器和一组仅47个经过维特比训练的上下文无关音素实现的。

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