利用语音识别知识的计算听觉场景分析

Daniel P. W. Ellis
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引用次数: 9

摘要

计算听觉场景分析(CASA)领域致力于建立人类能力的计算机模型,将声音混合解释为不同来源的组合。这项事业的一个主要障碍是定义和整合听众所利用的真实世界信号结构的高级知识。语音识别通常忽略非语音包含问题,但在从训练数据中获得强大的语音结构统计模型方面非常成功。在本文中,我们描述了一个包含语音和非语音成分的场景分析系统,解决了从语音识别器输出向后工作以估计混合语音成分的问题。最终,这种混合方法将需要对当前的语音识别方法进行更彻底的调整。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational auditory scene analysis exploiting speech-recognition knowledge
The field of computational auditory scene analysis (CASA) strives to build computer models of the human ability to interpret sound mixtures as the combination of distinct sources. A major obstacle to this enterprise is defining and incorporating the kind of high level knowledge of real-world signal structure exploited by listeners. Speech recognition, while typically ignoring the problem of nonspeech inclusions, has been very successful at deriving powerful statistical models of speech structure from training data. In this paper, we describe a scene analysis system that includes both speech and nonspeech components, addressing the problem of working backwards from speech recognizer output to estimate the speech component of a mixture. Ultimately, such hybrid approaches will require more radical adaptation of current speech recognition approaches.
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