Open Access

The Contribution of Music Information Retrieval System Optimization to Music Analysis in the Context of Big Data

 and   
Sep 03, 2024

Cite
Download Cover

Simonetta, F., Ntalampiras, S., & Avanzini, F. (2019, January). Multimodal music information processing and retrieval: Survey and future challenges. In 2019 international workshop on multilayer music representation and processing (MMRP) (pp. 10-18). IEEE. Search in Google Scholar

Pesek, M., Strle, G., Kavčič, A., & Marolt, M. (2017). The Moodo dataset: Integrating user context with emotional and color perception of music for affective music information retrieval. Journal of New Music Research, 46(3), 246-260. Search in Google Scholar

Furner, M., Islam, M. Z., & Li, C. T. (2021). Knowledge discovery and visualisation framework using machine learning for music information retrieval from broadcast radio data. Expert Systems with Applications, 182, 115236. Search in Google Scholar

Bayle, Y., Robine, M., & Hanna, P. (2019). SATIN: a persistent musical database for music information retrieval and a supporting deep learning experiment on song instrumental classification. Multimedia Tools and Applications, 78(3), 2703-2718. Search in Google Scholar

Urbano, J., & Flexer, A. (2018). Statistical analysis of results in music information retrieval: why and how. In Proceedings of the International Society for Music Information Retrieval Conference, Paris, France, pp. xli–xlii. Search in Google Scholar

Stober, S. (2017). Toward studying music cognition with information retrieval techniques: Lessons learned from the OpenMIIR initiative. Frontiers in psychology, 8, 238580. Search in Google Scholar

Cheng, Y. (2020, October). Music information retrieval technology: Fusion of music, artificial intelligence and blockchain. In 2020 3rd international conference on smart blockchain (SmartBlock) (pp. 143-146). IEEE. Search in Google Scholar

Vasu, K., & Choudhary, S. (2022). Music Information Retrieval Using Similarity Based Relevance Ranking Techniques. Scalable Computing: Practice and Experience, 23(3), 103-114. Search in Google Scholar

Schäfer, T., & Mehlhorn, C. (2017). Can personality traits predict musical style preferences? A meta-analysis. Personality and Individual Differences, 116, 265-273. Search in Google Scholar

Oore, S., Simon, I., Dieleman, S., Eck, D., & Simonyan, K. (2020). This time with feeling: Learning expressive musical performance. Neural Computing and Applications, 32, 955-967. Search in Google Scholar

Li, B., Liu, X., Dinesh, K., Duan, Z., & Sharma, G. (2018). Creating a multitrack classical music performance dataset for multimodal music analysis: Challenges, insights, and applications. IEEE Transactions on Multimedia, 21(2), 522-535. Search in Google Scholar

Chang, A., Kragness, H. E., Livingstone, S. R., Bosnyak, D. J., & Trainor, L. J. (2019). Body sway reflects joint emotional expression in music ensemble performance. Scientific reports, 9(1), 205. Search in Google Scholar

Murthy, Y. S., & Koolagudi, S. G. (2018). Content-based music information retrieval (cb-mir) and its applications toward the music industry: A review. ACM Computing Surveys (CSUR), 51(3), 1-46. Search in Google Scholar

Holzapfel, A., Sturm, B. L., & Coeckelbergh, M. (2018). Ethical Dimensions of Music Information Retrieval Technology. Transactions of the International Society for Music Information Retrieval, 1(1), 44-56. Search in Google Scholar

Stefani, D., & Turchet, L. (2022). On the challenges of embedded real-time music information retrieval. In Proceedings of the International Conference on Digital Audio Effects (DAFx) (Vol. 3, pp. 177-184). MDPI (Multidisciplinary Digital Publishing Institute). Search in Google Scholar

Clercq, T. D. (2017). Embracing ambiguity in the analysis of form in pop/rock music, 1982–1991. Music Theory Online, 23(3). Search in Google Scholar

Nieto, O., Mysore, G. J., Wang, C. I., Smith, J. B., Schlüter, J., Grill, T., & McFee, B. (2020). Audio-Based Music Structure Analysis: Current Trends, Open Challenges, and Applications. Transactions of the International Society for Music Information Retrieval, 3(1), 246-264. Search in Google Scholar

Sofer, D. (2020). Specters of Sex: Tracing the Tools and Techniques of Contemporary Music Analysis. Zeitschrift der Gesellschaft für Musiktheorie [Journal of the German-Speaking Society of Music Theory], 17(1), 31-63. Search in Google Scholar

Zhu Xiaojun & Balakrishnan Narayanaswamy.(2024).Exact likelihood inference for Laplace distribution based on generalized hybrid censored samples.Communications in Statistics - Simulation and Computation(1),259-272. Search in Google Scholar

Suzuki Hiroki & Kouchi Toshinori.(2022).Development of a single-scale initial flow field into steady homogeneous turbulence with validating a constructed Fourier spectral analysis.Journal of Physics: Conference Series(1). Search in Google Scholar

A S Bychkov,P V Kubasov,V G Kamenev & A E Dormidonov.(2024).Fourier transform with matched non-linear frequency modulation in femtosecond laser ranging with imbalanced dispersion..The Review of scientific instruments(5). Search in Google Scholar

Frainer Guilherme,Dufourq Emmanuel,Fearey Jack,Dines Sasha,Probert Rachel,Elwen Simon & Gridley Tess.(2023).Automatic detection and taxonomic identification of dolphin vocalisations using convolutional neural networks for passive acoustic monitoring.Ecological Informatics102291-. Search in Google Scholar

Language:
English