使用神经网络的动态模式降维

S. Nakagawa, Y. Ono, Y. Hirata
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引用次数: 3

摘要

为了识别具有动态特征的语音,应该使用包含动态变化模式的特征参数,即时间序列模式。K-L展开被用来降低时间序列模式的维数。该方法通过最小化原始参数与重构参数之间的误差,线性地改变特征参数空间的轴线。本文利用神经网络的一维非线性压缩能力来降低动态特征的维数。作者将所提出的基于连续隐马尔可夫模型的语音识别方法与基于1个K-L展开的约简方法进行了比较,并将回归系数的特征参数添加到原始静态特征中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dimensionality reduction of dynamical patterns using a neural network
To recognize speech with dynamical features, one should use feature parameters including dynamical changing patterns, that is, time sequential patterns. The K-L expansion has been used to reduce the dimensionality of time sequential patterns. This method changes the axes of feature parameter space linearly by minimizing the error between original and reconstructed parameters. In this paper, the dimensionality of dynamical features is reduced by using one nonlinear dimensional compressing ability of the neural network. The authors compared the proposed method on speech recognition using a continuous HMM (hidden Markov model) with the reduction method using one K-L expansion and the feature parameters of regression coefficients in addition to original static features.<>
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