Temporal Processing Neural Networks for Speech Recognition
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چکیده
Application of the temporal processing neural networks (TPNNs) to the speech recognition is justified by the nature of the task. Indeed ASR is a sequence recognition problem and assumes incorporation of time into decision process. Static models treat elements of sequence as independent patterns, which is clearly unrealistic. On the other hand temporal processing nets, built on the basis of multilayer perceptrons give us a hope to dismiss this assumption.
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تاریخ انتشار 2003