Language Independent Automated Segmentation of Speech using Bach scale filter-banks

G. Ananthakrishnan, H. G. Ranjani, A. Ramakrishnan
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引用次数: 7

Abstract

This correspondence describes a method for automated segmentation of speech. The method proposed in this paper uses a specially designed filter-bank called Bach filter-bank which makes use of 'music' related perception criteria. The speech signal is treated as continuously time varying signal as against a short time stationary model. A comparative study has been made of the performances using Mel, Bark and Bach scale filter banks. The preliminary results show up to 80 % matches within 20 ms of the manually segmented data, without any information of the content of the text and without any language dependence. The Bach filters are seen to marginally outperform the other filters.
基于巴赫尺度滤波器组的语言独立自动语音分割
本文描述了一种自动分割语音的方法。本文提出的方法使用一种特殊设计的滤波器组,称为巴赫滤波器组,它利用“音乐”相关的感知标准。相对于短时平稳模型,语音信号被视为连续时变信号。对梅尔、巴克和巴赫三组滤波器的性能进行了比较研究。初步结果表明,在人工分割数据的20毫秒内,匹配率高达80%,不需要任何文本内容信息,也不需要任何语言依赖。巴赫滤波器被认为略微优于其他滤波器。
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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