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A signal subspace approach for speech modelling and classification

机译:用于语音建模和分类的信号子空间方法

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摘要

In this paper, a speech classifier inspired by the signal subspace approach is developed. A novel signal subspace speech model is initially obtained via a rank reducing subspace decomposition algorithm that is based on the SVD. Motivated by the assumption that the speech signal comprises of short term dynamics that are slowly changing, it follows that the signal subspace of the speech signal is likewise slowly changing. The proposed signal subspace model aims to characterize the subspace dynamics using a family of subspace trajectories. In particular, each subspace trajectory is a sequence of vectors that traces the dynamics of a rank-one subspace in time. An assembly of these trajectories, henceforth, specifies the progression of the embedded signal subspace. To construct the signal subspace classifier, prototype elements in the form of the signal subspace models are determined for every signal class. A minimum-distance rule with a distance measure that resembles an energy difference function is subsequently applied in the actual classification task. Simulation of the proposed signal subspace classifier in an isolated digit speech recognition problem reveals promising results.
机译:本文提出了一种基于信号子空间方法的语音分类器。最初通过基于SVD的秩减小子空间分解算法获得了新颖的信号子空间语音模型。基于语音信号包括缓慢变化的短期动态的假设,由此得出语音信号的信号子空间同样缓慢变化的结论。所提出的信号子空间模型旨在使用一系列子空间轨迹来表征子空间动力学。特别地,每个子空间轨迹是向量序列,其在时间上追踪排名第一子空间的动态。因此,这些轨迹的集合指定了嵌入式信号子空间的进程。为了构造信号子空间分类器,针对每个信号类别确定信号子空间模型形式的原型元素。随后将具有类似于能量差函数的距离度量的最小距离规则应用于实际分类任务。在孤立数字语音识别问题中对拟议信号子空间分类器的仿真显示出令人鼓舞的结果。

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