Phoneme recognition using an adaptive supervised manifold learning algorithm

被引:0
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作者
Xiaoming Zhao
Shiqing Zhang
机构
[1] Taizhou University,School of Physics and Electronic Engineering
[2] Taizhou University,Department of Computer Science
来源
关键词
Dimensionality reduction; Manifold learning; Locally linear embedding; Phoneme recognition;
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学科分类号
摘要
To effectively handle speech data lying on a nonlinear manifold embedded in a high-dimensional acoustic space, in this paper, an adaptive supervised manifold learning algorithm based on locally linear embedding (LLE) for nonlinear dimensionality reduction is proposed to extract the low-dimensional embedded data representations for phoneme recognition. The proposed method aims to make the interclass dissimilarity maximized, while the intraclass dissimilarity minimized in order to promote the discriminating power and generalization ability of the low-dimensional embedded data representations. The performance of the proposed method is compared with five well-known dimensionality reduction methods, i.e., principal component analysis, linear discriminant analysis, isometric mapping (Isomap), LLE as well as the original supervised LLE. Experimental results on three benchmarking speech databases, i.e., the Deterding database, the DARPA TIMIT database, and the ISOLET E-set database, demonstrate that the proposed method obtains promising performance on the phoneme recognition task, outperforming the other used methods.
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页码:1501 / 1515
页数:14
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