监督本征频谱分析在TIMIT手机分类中的应用研究

Reza Sahraeian, Dirk Van Compernolle
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引用次数: 6

摘要

本征谱分析(ISA)已在流形学习设置中制定,允许对样本外数据进行自然扩展,并在学习框架中进行特征缩减。在本文中,我们提出了两种方法来提高有监督ISA的性能,然后比较了在本征子空间中应用线性判别技术与在外在子空间中应用线性判别技术的效果。为了降低复杂性,我们提出了一种预处理操作,以找到一个小的数据点子集,很好地代表流形结构;这是通过最大化二次Renyi熵来实现的。此外,我们使用了基于类的图,这不仅简化了我们的问题,而且在分类任务中也很有帮助。在TIMIT数据集上进行手机分类任务的实验结果表明,ISA特征比传统特征的性能有所提高,监督判别技术在ISA子空间上的表现优于传统特征空间。
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A study of supervised intrinsic spectral analysis for TIMIT phone classification
Intrinsic Spectral Analysis (ISA) has been formulated within a manifold learning setting allowing natural extensions to out-of-sample data together with feature reduction in a learning framework. In this paper, we propose two approaches to improve the performance of supervised ISA, and then we examine the effect of applying Linear Discriminant technique in the intrinsic subspace compared with the extrinsic one. In the interest of reducing complexity, we propose a preprocessing operation to find a small subset of data points being well representative of the manifold structure; this is accomplished by maximizing the quadratic Renyi entropy. Furthermore, we use class based graphs which not only simplify our problem but also can be helpful in a classification task. Experimental results for phone classification task on TIMIT dataset showed that ISA features improve the performance compared with traditional features, and supervised discriminant techniques outperform in the ISA subspace compared to conventional feature spaces.
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