Biblio

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In Press
2018
Gong, R., & Serra X. (2018).  Singing voice phoneme segmentation by hierarchically inferring syllable and phoneme onset positions. Accepted by Interspeech 2018, then withdrew due to the tight thesis writing schedule. Abstract
2017
Espinosa-Anke, L., Oramas S., Saggion H., & Serra X. (2017).  ELMDist: A vector space model with words and MusicBrainz entities. Workshop on Semantic Deep Learning (SemDeep), collocated with ESWC 2017. Abstract
Oramas, S., Nieto O., Sordo M., & Serra X. (2017).  A Deep Multimodal Approach for Cold-start Music Recommendation. 2nd Workshop on Deep Learning for Recommender Systems, at RecSys 2017. Abstract
Gong, R., Pons J., & Serra X. (2017).  Audio to Score Matching by Combining Phonetic and Duration Information. The 18th International Society for Music Information Retrieval Conference. Abstract
Caro Repetto, R., & Serra X. (2017).  A collection of music scores for corpus based jingju singing research. 18th International Society for Music Information Retrieval Conference. 46-52. Abstract
Srinivasamurthy, A., Holzapfel A., & Serra X. (2017).  Informed Automatic Meter Analysis of Music Recordings. 18th International Society for Music Information Retrieval (ISMIR) Conference. 679-685. Abstract
Oramas, S., Nieto O., Barbieri F., & Serra X. (2017).  Multi-label Music Genre Classification from Audio, Text and Images Using Deep Features. 18th International Society for Music Information Retrieval Conference (ISMIR 2017). Abstract
Bogdanov, D., & Serra X. (2017).  Quantifying music trends and facts using editorial metadata from the Discogs database. 18th International Society for Music Information Retrieval Conference (ISMIR 2017). 89-95. Abstract
Gong, R., & Serra X. (2017).  Identification of potential Music Information Retrieval technologies for computer-aided jingju singing training. The 5th China Conference on Sound and Music Technology - Chinese Traditional Music Technology Session. Abstract
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