SDLGASJul 24, 2022

HouseX: A Fine-grained House Music Dataset and its Potential in the Music Industry

arXiv:2207.11690v23 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This provides a domain-specific dataset for the music industry to improve genre classification, but it is incremental as it builds on existing genre classification tasks.

The authors tackled the lack of fine-grained sub-genre labels in music datasets by collecting and annotating a house music dataset with four sub-genres, achieving strongly competitive classification results with baseline models.

Machine sound classification has been one of the fundamental tasks of music technology. A major branch of sound classification is the classification of music genres. However, though covering most genres of music, existing music genre datasets often do not contain fine-grained labels that indicate the detailed sub-genres of music. In consideration of the consistency of genres of songs in a mixtape or in a DJ (live) set, we have collected and annotated a dataset of house music that provide 4 sub-genre labels, namely future house, bass house, progressive house and melodic house. Experiments show that our annotations well exhibit the characteristics of different categories. Also, we have built baseline models that classify the sub-genre based on the mel-spectrograms of a track, achieving strongly competitive results. Besides, we have put forward a few application scenarios of our dataset and baseline model, with a simulated sci-fi tunnel as a short demo built and rendered in a 3D modeling software, with the colors of the lights automated by the output of our model.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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