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An artificial neuron approach to speech processing based on a hidden Markov model

机译:基于隐马尔可夫模型的语音处理的人工神经元方法

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The paper discusses possible designs for a hidden Markov model using artificial neural network techniques. Applications are speech generation and speech recognition. The designs could be the basis for a computer program to realise an HMM; or they could be inspiration for a special purpose piece of hardware. The designs have two parts. The first determines the time sequence of hidden states. Although the design uses mainly standard logic components, the behaviour will be similar to a backpropagation layer of ANNs. The second part consists of one or more layers of feedforward AN processing elements in a standard backpropagation network with final outputs coded speech data. For training an HMM recognizer, the normal approach is to use the Viterbi Algorithm followed by fine tuning using the Baum Welch re-estimation algorithm. The ANN-HMM can be trained this way, but it can also be trained by the backpropagation algorithm, BP. The latter ties very directly to the unknown weights in the ANN circuits and may facilitate topological design.
机译:本文使用人工神经网络技术讨论了隐藏马尔可夫模型的可能设计。应用程序是语音生成和语音识别。设计可能是实现嗯的计算机程序的基础;或者它们可能是一块专用硬件的灵感。设计有两部分。首先确定隐藏状态的时间序列。虽然设计主要用于标准逻辑组件,但行为将类似于ANN的反向译。第二部分包括一个或多个馈电器的前馈网络,其标准背部化网络中的处理元件与最终输出编码的语音数据。用于训练HMM识别器,正常的方法是使用维特比算法,接着使用的Baum Welch重估算法通过微调。 Ann-HMM可以通过这种方式培训,但也可以通过BackProjagation算法,BP训练。后者与ANN电路中的未知重量直接连接,并且可以促进拓扑设计。

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