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首页> 外文期刊>IEEE Transactions on Neural Networks >Continuous speech recognition by connectionist statistical methods
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Continuous speech recognition by connectionist statistical methods

机译:通过连接主义统计方法进行连续语音识别

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Over the period of 1987-1991, a series of theoretical and experimental results have suggested that multilayer perceptrons (MLP) are an effective family of algorithms for the smooth estimation of high-dimension probability density functions that are useful in continuous speech recognition. The early form of this work has focused on hidden Markov models (HMM) that are independent of phonetic context. More recently, the theory has been extended to context-dependent models. The authors review the basic principles of their hybrid HMM/MLP approach and describe a series of improvements that are analogous to the system modifications instituted for the leading conventional HMM systems over the last few years. Some of these methods directly trade off computational complexity for reduced requirements of memory and memory bandwidth. Results are presented on the widely used Resource Management speech database that has been distributed by the US National Institute of Standards and Technology.
机译:在1987年至1991年期间,一系列理论和实验结果表明,多层感知器(MLP)是有效估计高维概率密度函数的有效算法家族,可用于连续语音识别。这项工作的早期形式集中于独立于语音上下文的隐马尔可夫模型(HMM)。最近,该理论已扩展到上下文相关模型。作者回顾了他们的混合HMM / MLP方法的基本原理,并描述了一系列改进,这些改进类似于最近几年对领先的传统HMM系统进行的系统修改。这些方法中的某些直接权衡了计算复杂性,以减少对内存和内存带宽的需求。结果显示在广泛使用的资源管理语音数据库中,该数据库已由美国国家标准与技术研究院分发。

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