基于k-均值聚类和神经网络集成的语音识别

Xin-guang Li, Min-feng Yao, Wen-Tao Huang
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引用次数: 11

摘要

针对单一BP神经网络在语音识别中的不足,提出了一种基于k-均值聚类和神经网络集成的语音识别方法。首先对多个神经网络个体进行训练,然后利用k-means聚类算法选择训练个体的一部分权值和阈值,以提高多样性。然后,选择最近的聚类中心的个体组成隶属度的初始权值和集成学习的阈值。该方法不仅克服了单个BP神经网络模型容易局部收敛、缺乏稳定性的缺点,而且解决了传统adaboost方法训练时间过长、单个网络多样性不明显的问题。最后的实验结果证明了该方法在独立语音识别中对说话人的有效性。
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Speech recognition based on k-means clustering and neural network ensembles
Aiming at the disadvantages of the single BP neural network in speech recognition, a method of speech recognition based on k-means clustering and neural network ensembles is presented in this paper. At first, a number of individual neural networks are trained, and then the k-means clustering algorithm is used to select a part of the trained individuals' weights and thresholds for improving diversity. After that, the individuals of the nearest clustering center are selected to make up the membership's initial weights and thresholds of the ensemble learning. The method not only overcomes the shortcomings that single BP neural network model is easy to local convergence and is lack of stability, but also solves the problems that the traditional adaboost method in training time is too long and the diversity of individual network is not obvious. The final experiment results prove the effectiveness of this method when applied to speakers of independent speech recognition.
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