cs.AI updates on arXiv.org 09月11日
音乐AI生成检测研究进展
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本文探讨了音乐信息检索领域音频和音乐生成系统的快速发展及其引发的版权问题,提出了一种基于结构模式分析的AI生成音乐检测方法,通过整合预训练模型和分段Transformer,在两个数据集上取得了高精度检测结果。

arXiv:2509.08283v1 Announce Type: cross Abstract: Audio and music generation systems have been remarkably developed in the music information retrieval (MIR) research field. The advancement of these technologies raises copyright concerns, as ownership and authorship of AI-generated music (AIGM) remain unclear. Also, it can be difficult to determine whether a piece was generated by AI or composed by humans clearly. To address these challenges, we aim to improve the accuracy of AIGM detection by analyzing the structural patterns of music segments. Specifically, to extract musical features from short audio clips, we integrated various pre-trained models, including self-supervised learning (SSL) models or an audio effect encoder, each within our suggested transformer-based framework. Furthermore, for long audio, we developed a segment transformer that divides music into segments and learns inter-segment relationships. We used the FakeMusicCaps and SONICS datasets, achieving high accuracy in both the short-audio and full-audio detection experiments. These findings suggest that integrating segment-level musical features into long-range temporal analysis can effectively enhance both the performance and robustness of AIGM detection systems.

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AI音乐生成 音乐信息检索 版权问题 结构模式分析 检测系统
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