English version of this page

MIRAGE - Et integrert AI-basert system for avansert musikkanalyse

Et hovedm?l i prosjektet er ? videreutvikle datamaskiners evne til ? lytte til og forst? musikk. Dette vil n?dvendiggj?re utvikling av banebrytende teknologi som ogs? vil kunne hjelpe menneskelige lyttere til ? bedre forst? og verdsette musikk. En viktig anvendelse av denne teknologien vil v?re ? gj?re musikk mer tilgjengelig og engasjerende.

Bildet kan inneholde: himmel, strand, tre, horisont, farger og nyanser.

KOMMENDE: MIRAGE Avslutningsseminar: Digitalisering og datamaskinst?ttet musikkanalyse av folkemusikk – Apr. 26, Nasjonalbiblioteket, Oslo

Om prosjektet

Vi skal videreutvikle v?rt datateknologiske rammeverk slik at vi kan hente ut store mengder informasjon om musikkens elementer som klang, toner, rytme, og form. Musikk kan ofte v?re kompleks, og for ? kunne trekke ut mening fra denne subtile kunstformen, m? flere musikkvitenskapelige elementer innarbeides i det datateknologiske rammeverket. Gjentakelser er ofte et viktig element i musikk; motiver kan bli gjentatt mange ganger i l?pet av et musikkverk, og flere musikkverk kan ligne hverandre slik at de danner s?regne stilkategorier. ? kunne avdekke gjentakelser er krevende men ogs? helt avgj?rende for prosjektet. Prosjektet vil ta for seg et stort utvalg musikalske stilarter fra tradisjonsmusikk, klassisk musikk og popul?rmusikk, akustisk s? vel som elektronisk, og fra ulike kulturer. Denne omfattende kartleggingen av musikkelementer ved hjelp av disse dataredskapene, vil ogs? bli brukt til ? utforske lytteres affektive og kroppslige musikk-relaterte forestillinger.

Foruten ? bidra til musikkvitenskap, musikkteknologi og musikkognisjon, vil dette prosjektet ogs? levere ny teknologi som kan brukes av et bredt publikum. Formidling av musikk ved hjelp a musikkvideoer har stort potensiale, s?rlig n?r det lydlige og det visuelle er godt integrert, og prosjektets teknologier vil gj?re det mulig ? generere interessante videoer fra mange forskjellige musikktyper. Vi tror slike maskingenererte visualiseringer av lyd-data vil kunne berike musikkopplevelsen og gj?re musikk mer tilgjengelig. Slike visualiseringer av musikk kan ogs? lette s?k i store musikksamlinger og vil i tillegg kunne ha anvendelser i musikkterapi.

Prosjektet er et 亚博娱乐官网_亚博pt手机客户端登录 med musikkseksjonen p? Nasjonalbiblioteket, verdensledende innen digitalisering og tilgjengeliggj?ring av kulturar.

Mer informasjon p? engelsk her.

Publikasjoner

  • Lartillot, Olivier; Johansson, Mats Sigvard; Elowsson, Anders; Monstad, Lars L?berg & Cyvin, Mattias Stor?s (2023). A Dataset of Norwegian Hardanger Fiddle Recordings with Precise Annotation of Note and Beat Onsets. Transactions of the International Society for Music Information Retrieval. ISSN 2514-3298. 6(1), s. 186–202. doi: 10.5334/TISMIR.139.
  • Thedens, Hans-Hinrich & Lartillot, Olivier (2023). AudioSegmentor: Et verkt?y for formidling av arkivopptak p? nettet. Studia Musicologica Norvegica. ISSN 0332-5024. 49(1), s. 92–101. doi: 10.18261/smn.49.1.7. Fulltekst i vitenarkiv
  • Szorkovszky, Alexander; Veenstra, Frank; Lartillot, Olivier Serge Gabriel; Jensenius, Alexander Refsum & Glette, Kyrre (2023). Embodied Tempo Tracking with a Virtual Quadruped, Proceedings of the Sound and Music Computing Conference 2023. SMC Network . ISSN 978-91-527-7372-7. doi: 10.5281/zenodo.10060970. Fulltekst i vitenarkiv
  • Bishop, Laura; H?ffding, Simon; Lartillot, Olivier Serge Gabriel & Laeng, Bruno (2023). Mental Effort and Expressive Interaction in Expert and Student String Quartet Performance. Music & Science. ISSN 2059-2043. 6. doi: 10.1177/20592043231208000.
  • Maidhof, Clemens; Müller, Viktor; Lartillot, Olivier; Agres, Kat; Bloska, Jodie & Asano, Rie [Vis alle 8 forfattere av denne artikkelen] (2023). Intra- and inter-brain coupling and activity dynamics during improvisational music therapy with a person with dementia: an explorative EEG-hyperscanning single case study. Frontiers in Psychology. ISSN 1664-1078. 14. doi: 10.3389/fpsyg.2023.1155732.
  • Juslin, Patrik N.; Sakka, Laura S.; Barradas, Gon?alo T. & Lartillot, Olivier (2022). Emotions, mechanisms, and individual differences in music listening: A stratified random sampling approach. Music Perception. ISSN 0730-7829. 40(1), s. 55–86. doi: 10.1525/mp.2022.40.1.55. Fulltekst i vitenarkiv
  • Lartillot, Olivier; Elovsson, Anders; Johansson, Mats Sigvard; Thedens, Hans-Hinrich & Monstad, Lars Alfred L?berg (2022). Segmentation, Transcription, Analysis and Visualisation of the Norwegian Folk Music Archive. I Pugin, Laurent (Red.), DLfM '22: 9th International Conference on Digital Libraries for Musicology. Association for Computing Machinery (ACM). ISSN 978-1-4503-9668-4. s. 1–9. doi: https:/doi.org/10.1145/3543882.3543883. Fulltekst i vitenarkiv
  • Lartillot, Olivier; Nymoen, Kristian; C?mara, Guilherme Schmidt & Danielsen, Anne (2021). Computational localization of attack regions through a direct observation of the audio waveform. Journal of the Acoustical Society of America. ISSN 0001-4966. 149(1), s. 723–736. doi: 10.1121/10.0003374.
  • Haugen, Mari Romarheim (2021). Investigating Music-Dance Relationships. A Case Study of Norwegian Telespringar. Journal of music theory. ISSN 0022-2909. 65(1), s. 17–38. doi: 10.1215/00222909-9124714.
  • Lartillot, Olivier (2021). Computational Musicological Analysis of Notated Music: a Brief Overview. Nota Bene. ISSN 1891-4829. 15, s. 142–161. Fulltekst i vitenarkiv
  • Weisser, Stéphanie; Lartillot, Olivier & Sechehaye, Hélène (2021). Investiguer la grésillance. Pour une approche ethno-acoustique du timbre musical. Cahiers d'ethnomusicologie. ISSN 2235-7688. 34, s. 37–58.
  • Elovsson, Anders & Lartillot, Olivier (2021). A Hardanger Fiddle Dataset with Performances Spanning Emotional Expressions and Annotations Aligned using Image Registration, Proceedings of the 22nd International Society for Music Information Retrieval Conference, Online, Nov 7-12, 2021. International Society for Music Information Retrieval. ISSN 978-1-7327299-0-2. s. 174–181. Fulltekst i vitenarkiv
  • Bruford, Fred & Lartillot, Olivier (2020). Multidimensional similarity modelling of complex drum loops using the GrooveToolbox, Proceedings of the 21st International Society for Music Information Retrieval (ISMIR) Conference. McGill-Queen's University Press. ISSN 978-0-9813537-0-8. s. 263–270. Fulltekst i vitenarkiv
  • Lartillot, Olivier & Bruford, Fred (2020). Bistate reduction and comparison of drum patterns, Proceedings of the 21st International Society for Music Information Retrieval (ISMIR) Conference. McGill-Queen's University Press. ISSN 978-0-9813537-0-8. s. 318–324. Fulltekst i vitenarkiv
  • Lartillot, Olivier; Cancino-Chacón, Carlos & Brazier, Charles (2020). Real-Time Visualisation Of Fugue Played By A String Quartet. I Spagnol, Simone & Valle, Andrea (Red.), Proceedings of the 17th Sound and Music Computing Conference. Axea sas/SMC Network. ISSN 978-88-945415-0-2. s. 115–122. Fulltekst i vitenarkiv
  • Elovsson, Karl Anders (2020). Polyphonic pitch tracking with deep layered learning. Journal of the Acoustical Society of America. ISSN 0001-4966. 148(1), s. 446–468. doi: 10.1121/10.0001468.

Se alle arbeider i Cristin

  • Lartillot, Olivier (2024). Harmonizing Tradition with Technology: Enhancing Norwegian Folk Music through Computational Innovation.
  • Johansson, Mats Sigvard & Lartillot, Olivier (2024). Automated transcription of Hardanger fiddle music: Tracking the beats.
  • Monstad, Lars L?berg & Lartillot, Olivier (2024). muScribe: a new transcription service for music professionals.
  • Lartillot, Olivier (2024). Overview of the MIRAGE project.
  • Lartillot, Olivier (2024). Musicological and Technological Perspectives on Computational Analysis of Electroacoustic Music. I Jensenius, Alexander Refsum (Red.), Sonic Design: Explorations Between Art and Science. Springer Nature. ISSN 978-3-031-57892-2. s. 271–297. doi: https:/doi.org/10.1007/978-3-031-57892-2_15.
  • Lartillot, Olivier (2024). Real-time MIRAGE visualisation of Bartok's first quartet, first movement.
  • Lartillot, Olivier (2024). MIRAGE Closing Seminar: Digitisation and computer-aided music analysis of folk music.
  • Thedens, Hans-Hinrich & Lartillot, Olivier (2024). The Norwegian Catalogue of Folk Music Online.
  • Monstad, Lars L?berg & Lartillot, Olivier (2024). Automated transcription of Hardanger fiddle music: Detecting the notes.
  • Lartillot, Olivier & Monstad, Lars L?berg (2023). MIRAGE - A Comprehensive AI-Based System for Advanced Music Analysis.
  • Lartillot, Olivier (2023). Dynamic Visualisation of Fugue Analysis, Demonstrated in a Live Concert by the Danish String Quartet.
  • Lartillot, Olivier (2023). Towards a comprehensive model for computational music transcription and analysis: a necessary dialog between machine learning and rule-based design?
  • Lartillot, Olivier & Monstad, Lars L?berg (2023). Computational music analysis: Significance, challenges, and our proposed approach.
  • Bishop, Laura; H?ffding, Simon; Laeng, Bruno & Lartillot, Olivier (2023). Mental effort and expressive interaction in expert and student string quartet performance.
  • Lartillot, Olivier; Thedens, Hans-Hinrich; Mjelva, Olav Lukseng?rd; Elovsson, Anders; Monstad, Lars L?berg & Johansson, Mats Sigvard [Vis alle 8 forfattere av denne artikkelen] (2023). Norwegian Folk Music & Computational Analysis.
  • Lartillot, Olivier (2023). Music Therapy Toolbox, and prospects.
  • Maidhof, Clemens; Agres, Kat; Fachner, J?rg & Lartillot, Olivier (2023). Intra- and inter-brain coupling during music therapy.
  • Wosch, Thomas; Vobig, Bastian; Lartillot, Olivier & Christodoulou, Anna-Maria (2023). HIGH-M (Human Interaction assessment and Generative segmentation in Health and Music).
  • Lartillot, Olivier (2023). MIRAGE Symposium #2: Music, emotions, analysis, therapy ... and computer.
  • Lartillot, Olivier; Swarbrick, Dana; Upham, Finn & Cancino-Chacón, Carlos Eduardo (2023). Video visualization of a string quartet performance of a Bach Fugue: Design and subjective evaluation.
  • Monstad, Lars L?berg & Lartillot, Olivier (2023). Automatic Transcription Of Multi-Instrumental Songs: Integrating Demixing, Harmonic Dilated Convolution, And Joint Beat Tracking.
  • Lartillot, Olivier (2023). Computational audio and musical features extraction: from MIRtoolbox to the MiningSuite.
  • Christodoulou, Anna-Maria; Lartillot, Olivier & Anagnostopoulou, Christina (2023). Computational Analysis of Greek Folk Music of the Aegean.
  • Christodoulou, Anna-Maria; Lartillot, Olivier & Anagnostopoulou, Christina (2023). Greek Folk Music Dataset.
  • Monstad, Lars Alfred L?berg; Baden, Peter & W?rstad, Bernt Isak Grave (2023). Kan kunstig intelligens brukes i l?tskriverprosessen?
  • Monstad, Lars L?berg (2023). Kunstig Intelligens i kunst og kultur. [TV]. NRK Dagsrevyen.
  • Monstad, Lars Alfred L?berg (2023). Demonstrasjon av Kunstig Intelligens som verkt?y for komponister.
  • Monstad, Lars L?berg; Silje Larsen, Borgan & Vegard, Waske (2023). AI i musikken: konsekvenser og muligheter.
  • Lartillot, Olivier (2023). Towards a Comprehensive Modelling Framework for Computational Music Transcription/Analysis.
  • Monstad, Lars Alfred L?berg (2023). KI kan demokratisere musikkbransjen. VG : Verdens gang. ISSN 0805-5203.
  • Lartillot, Olivier; Elovsson, Anders; Johansson, Mats Sigvard; Thedens, Hans-Hinrich & Monstad, Lars Alfred L?berg (2022). Segmentation, Transcription, Analysis and Visualisation of the Norwegian Folk Music Archive.
  • Lartillot, Olivier & Thedens, Hans-Hinrich (2022). Online Norwegian Folk Music Archive.
  • Lartillot, Olivier; God?y, Rolf Inge & Christodoulou, Anna-Maria (2022). Computational detection and characterisation of sonic shapes: Towards a Toolbox des objets sonores.
  • Danielsen, Anne; C?mara, Guilherme Schmidt; Lartillot, Olivier; Leske, Sabine Liliana & Spiech, Connor (2022). Musical rhythm. Behavioural, computational and neurophysiological perspectives.
  • Lartillot, Olivier; Guldbrandsen, Erling Eliseus & Cancino-Chacón, Carlos Eduardo (2021). Dynamics analysis, and application to a comparative study of Bruckner performances.
  • Danielsen, Anne (2021). Opening remarks, presentation of RITMO.
  • Lartillot, Olivier & Johansson, Mats Sigvard (2021). Tracking beats in Hardanger fiddle tunes .
  • Lartillot, Olivier; Elovsson, Anders & Mjelva, Olav Lukseng?rd (2021). A new software for computer-assisted annotation of music recordings, with a focus on transcription.
  • Dalgard, Joachim; Lartillot, Olivier; Vuoskoski, Jonna Katariina & Guldbrandsen, Erling Eliseus (2021). Absorption - Somewhere between the heart and the brain.
  • Elovsson, Anders & Lartillot, Olivier (2021). A Hardanger Fiddle Dataset with Performances Spanning Emotional Expressions and Annotations Aligned using Image Registration.
  • Tidemann, Aleksander & Lartillot, Olivier (2021). Interactive tools for exploring performance patterns in hardanger fiddle music.
  • Lartillot, Olivier (2021). Presentation of MIRAGE project.
  • Lartillot, Olivier & Lillesl?tten, Mari (2021). Olivier Lartillot utvikler verkt?y for ? forst? musikk bedre. [Internett]. Det humanistiske fakultet UiO YouTube account.
  • Lartillot, Olivier & Lillesl?tten, Mari (2021). Kunstig intelligens kan hjelpe deg ? forst? musikk bedre. [Internett]. RITMO News.
  • Lartillot, Olivier & Johansson, Mats Sigvard (2021). Automated beat tracking of Norwegian Hardanger fiddle music.
  • Elovsson, Anders & Lartillot, Olivier (2021). HF1: Hardanger fiddle dataset.
  • Tidemann, Aleksander; Lartillot, Olivier & Johansson, Mats Sigvard (2021). Towards New Analysis And Visualization Software For Studying Performance Patterns in Hardanger Fiddle Music.
  • Bruford, Fred & Lartillot, Olivier (2020). Multidimensional similarity modelling of complex drum loops using the GrooveToolbox.
  • Lartillot, Olivier; Cancino-Chacón, Carlos & Brazier, Charles (2020). Real-Time Visualisation Of Fugue Played By A String Quartet.
  • Lartillot, Olivier & Bruford, Fred (2020). Bistate reduction and comparison of drum patterns.
  • Lartillot, Olivier & Toiviainen, Petri (2020). Read about the Matlab MIRtoolbox. Young Acousticians Network (YAN) Newsletter. s. 4–10.
  • Christodoulou, Anna-Maria; Anagnostopoulou, Christina & Lartillot, Olivier (2022). Computational Analysis of Greek folk music of the Aegean islands. National and Kapodistrian University of Athens.

Se alle arbeider i Cristin

Publisert 12. mai 2019 23:45 - Sist endret 21. mars 2024 16:01

Deltakere

Detaljert oversikt over deltakere