基于概率决策的语音模式分类神经网络

K. Yiu, M. Mak, C.K. Li
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引用次数: 2

摘要

基于概率决策的神经网络(PDBNNs)最初由Lin, Kung和Lin(1997)提出用于人脸识别。虽然已经取得了很高的识别精度,但没有给出很多例子来突出决策边界的特征。本文旨在通过一项模式识别任务,即二维元音数据的分类,详细说明pdbnn与高斯混合模型的决策边界的比较。原始的pdbnn使用具有对角协方差矩阵的椭圆基函数,这对于具有相关成分的特征向量的建模可能效率低下。本文试图用全协方差矩阵来解决这个问题。本文还通过证明PDBNN的阈值机制在拒绝不属于任何已知类的数据方面非常有效,强调了PDBNN的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Probabilistic decision-based neural networks for speech pattern classification
Probabilistic decision-based neural networks (PDBNNs) were originally proposed by Lin, Kung and Lin (1997) for human face recognition. Although high recognition accuracy has been achieved, not many illustrations were given to highlight the characteristics of the decision boundaries. This paper aims at providing detailed illustrations to compare the decision boundaries of PDBNNs with that of Gaussian mixture models through a pattern recognition task, namely the classification of two-dimensional vowel data. The original PDBNNs use elliptical basis functions with diagonal covariance matrices, which may be inefficient for modeling feature vectors with correlated components. This paper attempts to tackle this problem by using full covariance matrices. The paper also highlights the strengths of PDBNNs by demonstrating that the PDBNN's thresholding mechanism is very effective in rejecting data not belonging to any known classes.
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