AI-Generated Music Detection in Broadcast Monitoring

arXiv:2602.06823v2h-index: 13
AI Analysis

This addresses the challenge of AI music detection for broadcast monitoring, but it is incremental as it focuses on dataset creation and benchmarking rather than a new detection method.

The paper tackled the problem of detecting AI-generated music in broadcast audio, where existing methods fail due to short excerpts and speech masking, and introduced the AI-OpenBMAT dataset, showing that state-of-the-art models drop below 60% F1-score in these conditions.

AI music generators have advanced to the point where their outputs are often indistinguishable from human compositions. While detection methods have emerged, they are typically designed and validated in music streaming contexts with clean, full-length tracks. Broadcast audio, however, poses a different challenge: music appears as short excerpts, often masked by dominant speech, conditions under which existing detectors fail. In this work, we introduce AI-OpenBMAT, the first dataset tailored to broadcast-style AI-music detection. It contains 3,294 one-minute audio excerpts (54.9 hours) that follow the duration patterns and loudness relations of real television audio, combining human-made production music with stylistically matched continuations generated with Suno v3.5. We benchmark a CNN baseline and state-of-the-art SpectTTTra models to assess SNR and duration robustness, and evaluate on a full broadcast scenario. Across all settings, models that excel in streaming scenarios suffer substantial degradation, with F1-scores dropping below 60% when music is in the background or has a short duration. These results highlight speech masking and short music length as critical open challenges for AI music detection, and position AI-OpenBMAT as a benchmark for developing detectors capable of meeting industrial broadcast requirements.

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