多功能音频分割浏览和注释

G. Tzanetakis, P. Cook
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引用次数: 152

摘要

索引和基于内容的检索对于处理在Web和其他地方可用的大量音频和多媒体数据是必要的。由于使用现有音频编辑器进行手动索引非常耗时,因此提出了许多自动内容分析系统。这些系统大多依靠语音识别技术来创建文本索引。另一方面,很少有人提出对音乐和一般音频进行自动索引的系统。通常,这些系统依赖于分类和相似检索技术,并在有限的音频域中工作。对任意音频数据进行快速索引的一种稍微不同、更通用的方法是使用基于多个时间特征的分割,并结合自动或半自动注释。本文提出了一种通用的音频分割方法。进行了大量的实验来评估所提出的方法,并比较不同的分割方案。最后,结合现有的分类技术,实现了基于分割的音频浏览标注工具原型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multifeature audio segmentation for browsing and annotation
Indexing and content-based retrieval are necessary to handle the large amounts of audio and multimedia data that is becoming available on the Web and elsewhere. Since manual indexing using existing audio editors is extremely time consuming a number of automatic content analysis systems have been proposed. Most of these systems rely on speech recognition techniques to create text indices. On the other hand, very few systems have been proposed for automatic indexing of music and general audio. Typically these systems rely on classification and similarity-retrieval techniques and work in restricted audio domains. A somewhat different, more general approach for fast indexing of arbitrary audio data is the use of segmentation based on multiple temporal features combined with automatic or semi-automatic annotation. In this paper, a general methodology for audio segmentation is proposed. A number of experiments were performed to evaluate the proposed methodology and compare different segmentation schemes. Finally, a prototype audio browsing and annotation tool based on segmentation combined with existing classification techniques was implemented.
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