Neural Synthesis as a Methodology for Art-Anthropology in Contemporary Music

IF 0.2 3区 艺术学 0 MUSIC
M. Dyer
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引用次数: 0

Abstract

This article investigates the use of machine learning within contemporary experimental music as a methodology for anthropology, as a transformational engagement that might shape knowing and feeling. In Midlands (2019), Sam Salem presents an (auto)ethnographical account of his relationship to the city of Derby, UK. By deriving musical materials from audio generated by the deep neural network WaveNet, Salem creates an uncanny, not-quite-right representation of his childhood hometown. Similarly, in her album A Late Anthology of Early Music Vol. 1: Ancient to Renaissance (2020), Jennifer Walshe uses the neural network SampleRNN to create a simulated narrative of Western art music. By mapping her own voice onto selected canonical works, Walshe presents both an autoethnographic and anthropological reimagining of a musical past and questions practices of historiography. These works are contextualised within the practice and theory of filmmaker-ethnographer Trinh T. Minh-ha and her notion of ‘speaking nearby’. In extension of Tim Ingold’s conception of anthropology, it is shown that both works make collaborative human and non-human inquiries into the possibilities of human (and non-human) life.
神经综合:当代音乐艺术人类学的方法论
本文研究了在当代实验音乐中使用机器学习作为人类学的一种方法,作为一种可能塑造认知和感觉的转换参与。在《米德兰》(2019)中,萨姆·萨勒姆(Sam Salem)对他与英国德比市的关系进行了(自动)民族志描述。通过从深度神经网络WaveNet生成的音频中提取音乐材料,萨勒姆创造了一个神秘的、不太正确的童年家乡形象。同样,在她的专辑《早期音乐后期选集第1卷:古代到文艺复兴》(2020)中,詹妮弗·沃尔舍使用神经网络SampleRNN创建了西方艺术音乐的模拟叙事。通过将自己的声音映射到选定的经典作品中,Walshe呈现了对音乐过去的民族志和人类学重新想象,并对史学实践提出了质疑。这些作品是在电影制作人、民族志学家Trinh T.Minh ha的实践和理论以及她“在附近说话”的概念的背景下创作的。在蒂姆·英格尔德人类学概念的延伸中,这两部作品都对人类(和非人类)生活的可能性进行了人类和非人类的合作探索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.20
自引率
16.70%
发文量
38
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