SampleMatch:鼓样本检索的音乐背景

S. Lattner
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引用次数: 0

摘要

现代数字音乐制作通常涉及将众多声学元素组合在一起来编写一段音乐。这些元素的重要类型是鼓样本,它决定了作品的打击成分的特征。艺术家必须用他们的审美判断来评估一个给定的鼓样本是否适合当前的音乐背景。然而,选择鼓样本从一个潜在的大库是乏味的,可能会中断创意流程。在这项工作中,我们探索了基于从数据中学习到的美学原则的自动鼓样检索。因此,艺术家可以在他们的库中通过适合不同阶段的音乐背景来对样本进行排序(例如,通过适合不完整的歌曲混合)。为此,我们使用对比学习来最大化来自同一首歌的鼓样本的分数。我们进行了一个听力测试,以确定人工评分是否与自动评分功能匹配。我们还进行了客观的定量分析,以评估我们的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SampleMatch: Drum Sample Retrieval by Musical Context
Modern digital music production typically involves combining numerous acoustic elements to compile a piece of music. Important types of such elements are drum samples, which determine the characteristics of the percussive components of the piece. Artists must use their aesthetic judgement to assess whether a given drum sample fits the current musical context. However, selecting drum samples from a potentially large library is tedious and may interrupt the creative flow. In this work, we explore the automatic drum sample retrieval based on aesthetic principles learned from data. As a result, artists can rank the samples in their library by fit to some musical context at different stages of the production process (i.e., by fit to incomplete song mixtures). To this end, we use contrastive learning to maximize the score of drum samples originating from the same song as the mixture. We conduct a listening test to determine whether the human ratings match the automatic scoring function. We also perform objective quantitative analyses to evaluate the efficacy of our approach.
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