Chi Xu
[1] K.S. Gupta, Development of music player application usingemotion recognition, International Journal for Modern Trendsin Science and Technology, 7(1), 2021, 54–57. [2] C. Chen and Q. Li, A multimodal music emotion classificationmethod based on multifeature combined network classifier,Mathematical Problems in Engineering, 2020, 2020, 1–11. [3] L.K. Zhang, S.Q. Sun, B.X. Xing, R. Luo, and K. Zhang,Using psychophysiological measures to recognize personal musicemotional experience, Frontiers of Information Technology &Electronic Engineering, 20(7), 2019, 964–974. [4] M. Russo, L. Kraljevi, M. Stella, and M. Sikora, Cochleogram-based approach for detecting perceived emotions in music,Information Processing & Management, 57(5), 2020, 1–17. [5] D. Chaudhary, N.P. Singh, and S. Singh, Development ofmusic emotion classification system using convolution neuralnetwork, International Journal of Speech Technology, 24(3),2021, 571–580. [6] S. Wang, C. Xu, A.S. Ding, and Z. Tang, A novel emotion-aware hybrid music recommendation method using deep neuralnetwork, Electronics, 10(15), 2021, 1–25. [7] J.X. He, L. Zhou, Z.T. Liu, and X. Hu, Digital empiricalresearch of influencing factors of musical emotion classificationbased on pleasure-arousal musical emotion fuzzy model,Journal of Advanced Computational Intelligence and IntelligentInformatics, 24(7), 2020, 872–881. [8] K. Sorussa, A. Choksuriwong, and M. Karnjanadecha, Emotionclassification system for digital music with a cascaded technique,ECTI Transactions on Computer and Information Technology(ECTI-CIT), 14(1), 2020, 53–66. [9] A.I. Middya, B. Nag, and S. Roy, Deep learning basedmultimodal emotion recognition using model-level fusion ofaudio-visual modalities, Knowledge-based Systems, 224, 2022,1–14. [10] S.D. Reakaa and J. Haritha, Comparison study on speechemotion prediction using machine learning, Journal of Physics:Conference Series, 1921, 2021, 1–9. [11] Y. Jin, D. Wu, and W. Guo, Attention-based LSTM with filtermechanism for entity relation classification, Symmetry, 12(10),2020, 1–15. [12] H.R. Patel and V.A. Shah, Shadowed type-2 fuzzy sets indynamic parameter adaption in cuckoo search and flowerpollination algorithms for optimal design of fuzzy fault-tolerantcontrollers, Mathematical & Computational Applications,27(6), 2022, 1–32. [13] H.R. Patel and V.A. Shah, A metaheuristic approach forinterval type-2 fuzzy fractional order fault-tolerant controllerfor a class of uncertain nonlinear system, Automatika, 63(4),2022, 656–675.145 [14] M.B. Er and I.B. Aydilek, Music emotion recognition by usingchroma spectrogram and deep visual features, InternationalJournal of Computational Intelligence Systems, 12(2), 2019,1622–1634. [15] K. Zvarevashe and O.O. Olugbara, Recognition of speechemotion using custom 2D-convolution neural network deeplearning algorithm, Intelligent Data Analysis, 24(5), 2020,1065–1086. [16] W. Hong, W. Wang, Y. Weng, S. Luo, P. Hu, X. Zheng, and J.Qi, Stock price movements prediction with textual information,Mechatronic Systems and Control, 46, 2018, 141–149. [17] W. Liu, Q. Wang, and Q. Guo, Automatic radar waveformrecognition based on neural network, Mechatronic Systems andControl, 46, 2018, 92–96. [18] V. Kalra, D.R. Agrawal, and S. Sharma, Special issue: Domainadaptable model for sentiment analysis, Mechatronic Systemsand Control, 50, 2022, 81–96. [19] H.R. Patel, Fuzzy-based metaheuristic algorithm for optimiza-tion of fuzzy controller: Fault-tolerant control application,International Journal of Intelligent Computing and Cybernet-ics, 15(4), 2022, 599–624. [20] G.S. Lee, EEG-based emotion recognition by convolutionalneural network with multi-scale kernels, Sensors, 21(15), 2021,1–13.
Important Links:
Go Back