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Content-Based Retrieval of Music and Audio

机译:基于内容的音乐和音频检索

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摘要

Though many systems exist for content-based retrieval of images, little work has been done on the audio portion of the multimedia stream. This paper presents a system to retrieve audio documents by acoustic similarity. The similarity measure is based on statistics derived from a supervised vector quantizer, rather than matching simple pitch or spectral characteristics. The system is thus able to learn distinguishing audio features while ignoring unimportant, variation. Both theoretical and experimental results are presented, including quantitative measures of retrieval performance. Retrieval was tested on a corpus of simple sounds as well as a corpus of musical excerpts. The system is purely data-driven and does not depend on particular audio characteristics. Given a suitable parameterization, this method may thus be applicable to image retrieval as well.
机译:尽管基于内容的图像检索存在许多系统,但在多媒体流的音频部分上已经完成了一点的工作。本文介绍了通过声学相似性检索音频文档的系统。相似度测量基于来自监控矢量量化器的统计数据,而不是匹配简单的间距或光谱特性。因此,该系统能够在忽略不重要,变化的同时学习区分音频功能。介绍了理论和实验结果,包括检索性能的定量测量。检索在简单的声音和音乐摘录的语料库上测试了检索。系统纯粹是数据驱动的,不依赖于特定的音频特性。考虑到合适的参数化,因此该方法也可以适用于图像检索。

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