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Participation of the MTG to ISMIR 2020 conference
Participation of the MTG to ISMIR 2020 conference
The MTG participates to the 21st International Society for Music Information Retrieval Conference (ISMIR 2020) that takes place online from October 11th to the 16th 2020.
ISMIR is the world’s leading research forum on processing, searching, organizing and accessing music-related data. MTG's main contributions to ISMIR 2020 are the presentations of 9 papers in the main program, 1 tutorial, and 2 papers in the Late Breaking session.
The papers presented as part of the main program are:
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Chandna P., Cuesta H., Gómez E. A Deep Learning Based Analysis-Synthesis Framework For Unison Singing.
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Cuesta H., McFee B., Gómez E. Multiple F0 Estimation in Vocal Ensembles using Convolutional Neural Networks.
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Gómez-Cañón, J.S., Cano E., Herrera P., Gómez E. Joyful for you and tender for us: the influence of individual characteristics and language on emotion labeling and classification.
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Petermann D., Chandna P., Cuesta H., Bonada J., Gómez E. Deep Learning Based Source Separation Applied To Choir Ensembles.
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Yesiler, F., Serrà, J., Gómez, E. Less is more: Faster and better music version identification with embedding distillation.
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Doras, G., Yesiler, F., Serrà, J., Gómez, E., Peeters, G. Combining musical features for cover detection.
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Correya, A., Bogdanov, D., Joglar-Ongay, L., Serra, X. Essentia.js: A JavaScript Library for Music and Audio Analysis on the Web.
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Ramires, A., Font, F., Bogdanov, D., Smith, J. B. L., Yang, Y.H., Ching, J., Chen, B.Y., Wu, Y.K., Wei-Han, H., Serra, X. The Freesound Loop Dataset and Annotation Tool.
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Korzeniowski, F., Nieto, O., McCallum, M. C., Won, M., Oramas, S., Schmidt, E. M. Mood classification using listening data.
The tutorial is:
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Yesiler, F., Tralie, C., Serrà, J.: Version Identification in the 20s
The papers presented in the Late Breaking Session are:
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Pandrea, A.G., Gómez-Cañón, J.S., Herrera, P. Cross-Dataset Music Emotion Recognition: an End-to-End Approach.
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Alonso-Jiménez, P., Bogdanov, D., Serra, X. Deep embeddings with Essentia models.