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首页> 外文期刊>Sound Studies: An Interdisciplinary Journal >'All possible sounds': speech, music, and the emergence of machine listening
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'All possible sounds': speech, music, and the emergence of machine listening

机译:“所有可能的声音”:语音、音乐和机器聆听的出现

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"Machine listening" is one common term for a fast-growing interdisciplinary field of science and engineering that "uses signal processing and machine learning to extract useful information from sound". This article contributes to the critical literature on machine listening by presenting some of its history as a field. From the 1940s to the 1990s, work on artificial intelligence and audio developed along two streams. There was work on speech recognition/understanding, and work in computer music. In the early 1990s, another stream began to emerge. At institutions such as MIT Media Lab and Stanford's CCRMA, researchers started turning towards "more fundamental problems of audition". Propelled by work being done by and alongside musicians, speech and music would increasingly be understood by computer scientists as particular sounds within a broader "auditory scene". Researchers began to develop machine listening systems for a more diverse range of sounds and classification tasks: often in the service of speech recognition, but also increasingly for their own sake. The soundscape itself was becoming an object of computational concern. Today, the ambition is "to cover all possible sounds". That is the aspiration with which we must now contend politically, and which this article sets out to historicise and understand.
机译:“机器聆听”是一个快速发展的跨学科科学和工程领域的常用术语,该领域“使用信号处理和机器学习从声音中提取有用的信息”。本文通过介绍机器聆听领域的一些历史,为机器聆听的批判性文献做出了贡献。从 1940 年代到 1990 年代,人工智能和音频方面的工作沿着两条流发展。有语音识别/理解方面的工作,以及计算机音乐方面的工作。在 1990 年代初期,另一股溪流开始出现。在麻省理工学院媒体实验室(MIT Media Lab)和斯坦福大学CCRMA等机构,研究人员开始转向“更基本的试镜问题”。在音乐家和音乐家一起工作的推动下,计算机科学家将越来越多地将语音和音乐理解为更广泛的“听觉场景”中的特定声音。研究人员开始开发机器聆听系统,用于更多样化的声音和分类任务:通常为语音识别服务,但也越来越多地为他们自己服务。声景本身正在成为计算关注的对象。今天,我们的雄心壮志是“覆盖所有可能的声音”。这就是我们现在必须在政治上与之抗争的愿望,本文旨在将其历史化和理解。

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