Deep Composer Classification Using Symbolic Representation
In this study, we train deep neural networks to classify composer on a symbolic domain. The model takes a two-channel two-dimensional input, i.e., onset and note activations of time-pitch representation, which is converted from MIDI recordings and performs a single-label classification. On the exper...
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Zusammenfassung: | In this study, we train deep neural networks to classify composer on a
symbolic domain. The model takes a two-channel two-dimensional input, i.e.,
onset and note activations of time-pitch representation, which is converted
from MIDI recordings and performs a single-label classification. On the
experiments conducted on MAESTRO dataset, we report an F1 value of 0.8333 for
the classification of 13~classical composers. |
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DOI: | 10.48550/arxiv.2010.00823 |