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首页> 外文期刊>Swarm and Evolutionary Computation >Leveraging diversity in computer-aided musical orchestration with an artificial immune system for multi-modal optimization
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Leveraging diversity in computer-aided musical orchestration with an artificial immune system for multi-modal optimization

机译:利用计算机辅助音乐园的多样性,具有用于多模态优化的人工免疫系统

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The aim of computer-aided musical orchestration (CAMO) is to find a combination of musical instrument sounds that perceptually approximates a reference sound when played together. The complexity of timbre perception and the combinatorial explosion of all possible musical instrument sound combinations make it very challenging to find even one orchestration for a reference sound. However, finding only one orchestration is seldom enough given the creative nature of the compositional process. Compositional applications of computer-aided musical orchestration can greatly benefit from multiple orchestrations with diversity. In this work, we use an artificial immune system (AIS) called opt-aiNet to search for combinations of musical instrument sounds that minimize the distance to a reference sound encoded in a fitness function. Opt-aiNet was developed to maximize diversity in the solution set of multi-modal optimization problems, which results in multiple alternative orchestrations for the same reference sound that are different among themselves. We compared the diversity and the similarity of the orchestrations proposed by opt-aiNet (CAMO-AIS) against a standard genetic algorithm (CAMO-GA) and Orchids, which is considered the state of the art for CAMO, for 13 reference sounds. In general, CAMO-AIS outperformed CAMO-GA and Orchids for several measures of objective diversity. We performed a listening test to evaluate and compare the perceptual similarity of the orchestrations by CAMO-AIS and Orchids. CAMO-AIS generated orchestrations that were perceived to be as similar to the reference sounds as those returned by Orchids. Therefore, CAMO-AIS has higher diversity of orchestrations than Orchids without loss of perceptual similarity.
机译:计算机辅助音乐编队(CAMO)的目的是找到乐器声音的组合,感知在一起时感知引用声音。 SIMBRE感知的复杂性和所有可能的乐器声音组合的组合爆炸使得甚至找到一个用于参考声音的管弦乐队非常具有挑战性。然而,鉴于组合过程的创造性本质,只有一个管弦乐流量很少。计算机辅助音乐编队的组成应用可以极大地受益于多种调节。在这项工作中,我们使用称为OPT-AINET的人工免疫系统(AIS)来搜索乐器声音的组合,其最小化到在适合函数中编码的参考声音的距离。开发了Opt-Ainet以最大化解决方案集的多模态优化问题的多样性,这导致多种替代协调,用于不同的参考声音。我们比较了Opt-Ainet(Camo-AIS)提出的弯曲的多样性和相似性对标准的遗传算法(CAMO-GA)和兰花,其被认为是迷彩的最先进,用于13个参考声音。一般来说,凸轮AIS优于迷彩 - 甘菊和兰花,实现了几种客观多样性的措施。我们执行了一个聆听测试,以评估并比较Camo-AIS和兰花的编程的感知相似性。 Camo-AIS生成的弯曲,被认为与兰花返回的声音一样类似于参考声音。因此,迷彩 - AIS具有比兰花更高的调节器,而不会丧失感知相似性。

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