Kernel metric learning for phonetic classification

J. Huang, Xi Zhou, M. Hasegawa-Johnson, Thomas S. Huang
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引用次数: 2

Abstract

While a sound spoken is described by a handful of frame-level spectral vectors, not all frames have equal contribution for either human perception or machine classification. In this paper, we introduce a novel framework to automatically emphasize important speech frames relevant to phonetic information. We jointly learn the importance of speech frames by a distance metric across the phone classes, attempting to satisfy a large margin constraint: the distance from a segment to its correct label class should be less than the distance to any other phone class by the largest possible margin. Furthermore, an universal background model structure is proposed to give the correspondence between statistical models of phone types and tokens, allowing us to use statistical models of each phone token in a large margin speech recognition framework. Experiments on TIMIT database demonstrated the effectiveness of our framework.
语音分类的核度量学习
虽然说话的声音是由少数帧级光谱向量描述的,但并非所有帧对人类感知或机器分类都有相同的贡献。在本文中,我们引入了一种新的框架来自动强调与语音信息相关的重要语音框架。我们通过跨电话类的距离度量来共同学习语音帧的重要性,试图满足一个大的边界约束:从一个片段到其正确标签类的距离应该小于到任何其他电话类的距离。此外,提出了一种通用的背景模型结构,给出了电话类型和令牌统计模型之间的对应关系,使我们能够在大余量语音识别框架中使用每个电话令牌的统计模型。在TIMIT数据库上的实验验证了该框架的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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