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Cooperative supervised and unsupervised learning algorithm for phoneme recognition in continuous speech and speaker-independent context

机译:连续语音和说话者无关上下文中的协作有监督和无监督学习算法用于音素识别

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摘要

Neural networks have been traditionally considered as an alternative approach to pattern recognition in general, and speech recognition in particular. There have been much success in practical pattern recognition applications using neural networks including multi-layer perceptrons, radial basis functions, and self-organizing maps (SOMs). In this paper, we propose a system of SOMs based on the association of some supervised and unsupervised learning algorithms inherited from the most popular neural network in the unsupervised learning category, SOM. The case study of the proposed system of SOMs is phoneme recognition in continuous speech and speaker independent context. Also, we propose a way to save more information during training phase of a Kohonen map in the objective to ameliorate speech recognition accuracy. The applied SOM variants serve as tools for developing intelligent systems and pursuing artificial intelligence applications.
机译:传统上,通常将神经网络视为模式识别(尤其是语音识别)的替代方法。在使用包括多层感知器,径向基函数和自组织图(SOM)的神经网络的实际模式识别应用中,已经取得了许多成功。在本文中,我们基于在无监督学习类别SOM中从最受欢迎的神经网络继承的一些有监督和无监督学习算法的关联,提出了一种SOM系统。所提出的SOM系统的案例研究是连续语音和说话者无关上下文中的音素识别。另外,我们提出了一种在Kohonen映射的训练阶段保存更多信息的方法,目的是改善语音识别的准确性。应用的SOM变体用作开发智能系统和追求人工智能应用的工具。

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