人工智能初创公司指责唱片公司采取反竞争策略

币界网Publicado em 2024-08-05Última atualização em 2024-08-05

币界网报道:

允许用户使用人工智能生成音乐的两家初创公司Suno和Udio指责主要唱片公司的反竞争行为和阻止新进入音乐行业的行为。这些意见书是针对美国唱片业协会(RIAA)的单独法律文件的一部分。

6月,RIAA分别起诉了Suno和Udio,指控这两家公司使用受版权保护的“大规模录音”来训练他们的人工智能模型。该协会代表环球音乐集团、索尼音乐和华纳唱片等主要唱片公司,要求对每首使用的“未经许可”的歌曲赔偿高达15万美元。

人工智能初创公司表示,公开可用的数据是公平的

RIAA在其投诉中声称,Suno和Udio创作的一些歌曲类似于Chuck Berry和ABBA等知名艺术家的作品,这些作品归唱片公司所有。Suno创作的一首名为“跃动女王”的歌曲包含ABBA“跳舞女王”的歌词,听起来像乐队。另一位翻唱了贝里的《约翰尼·B·古德》的歌词。

用户可以在Suno和Udio上创建音乐,方法是向生成式AI模型发送一条短信,描述他们希望系统创建什么。该公司在5月份表示,自去年12月以来,人们已经使用了Suno的AI音乐技术超过1200万次。

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