机器聆听:与ART的声学接口

Benjamin D. Smith, Guy E. Garnett
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引用次数: 4

摘要

机器聆听的最新发展为人机交互的创新范式提供了机会。语音识别系统展示了一种符合面向事件控制模型的典型方法。然而,声音是连续的,高度维度的,为计算机交互提供了丰富的媒介。无监督机器学习模型为实时机器聆听和理解音频和声音数据提供了巨大的潜力。我们提出了一种利用无监督机器学习算法的方法,特别是自适应共振理论,以告知机器聆听,构建音乐上下文信息,并驱动实时交互式表演系统。我们利用训练有素的即兴音乐家的专业知识,提出了这个模型的设计和评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine listening: acoustic interface with ART
Recent developments in machine listening present opportunities for innovative new paradigms for computer-human interaction. Voice recognition systems demonstrate a typical approach that conforms to event oriented control models. However, acoustic sound is continuous, and highly dimensional, presenting a rich medium for computer interaction. Unsupervised machine learning models present great potential for real-time machine listening and understanding of audio and sound data. We propose a method for harnessing unsupervised machine learning algorithms, Adaptive Resonance Theory specifically, in order to inform machine listening, build musical context information, and drive real-time interactive performance systems. We present the design and evaluation of this model leveraging the expertise of trained, improvising musicians.
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