# ArtifactNet-Real Real (human-created) music dataset for AI-generated music detection research. ## Overview | Split | Songs | Segments | Size | |-------|-------|----------|------| | Train | 15,546 | 70,463 | 47GB | | Val | 1,943 | 8,075 | 5.4GB | | Test | 1,944 | 8,384 | 5.6GB | | **Total** | **19,433** | **86,922** | **~58GB** | ## Format - **Audio**: WAV, 44.1kHz, Stereo - **Segment Duration**: 4 seconds - **Hop Size**: 2 seconds (50% overlap) ## Structure ``` ArtifactNet-Real/ ├── README.md ├── metadata.json # Song lists per split ├── train/{song_id}/seg_XXXX.wav ├── val/{song_id}/seg_XXXX.wav └── test/{song_id}/seg_XXXX.wav ``` ## Usage This dataset provides **Real** (human-created) music samples for training AI music detection models. To generate Demucs residuals: ```python from demucs.pretrained import get_model from demucs.apply import apply_model model = get_model('htdemucs') # residual = original - sum(sources) ``` ## License CC-BY-NC 4.0 (Non-commercial use) ## Citation ```bibtex @dataset{artifactnet_real_2026, title={ArtifactNet-Real: Real Music Dataset for AI Detection}, author={...}, year={2026}, url={...} } ``` ## Related - **ArtifactNet**: AI-generated music detection framework - **Paper**: [TBD]