This work is licensed under the Creative Commons Attribution 4.0 International License.
Robb, S. L. (2014). Journal of music therapy: advancing the science and practice of music therapy. Journal of Music Therapy(1), 1-3.Search in Google Scholar
Yongjie Zhu, Xiaoyu Wang, Klaus Mathiak, Petri Toiviainen, & Fengyu Cong. (2021). Response to discussion on “altered eeg oscillatory brain networks during music-listening in depression”. International Journal of Neural Systems, 31(4).Search in Google Scholar
Sciarabba, Amanda, Knight, & Andrew. (2016). Evaluating electronic music technology resources for music therapy. The Arts in psychotherapy.Search in Google Scholar
Bhatti, A. M., Majid, M., Anwar, S. M., & Khan, B. (2016). Human emotion recognition and analysis in response to audio music using brain signals. Computers in Human Behavior.Search in Google Scholar
Er, M. B. B., Cig, H., & Aydilek, B. B. (2021). A new approach to recognition of human emotions using brain signals and music stimuli. Applied Acoustics, 175.Search in Google Scholar
Martens, K. A. E., Silveira, C. R. A., Intzandt, B. N., & Almeida, Q. J.(2018). State anxiety predicts cognitive performance in patients with parkinson’s disease. Neuropsychology, 32(8), 950-957.Search in Google Scholar
Cibrian, F. L., Pena, O., Ortega, D., & Tentori, M. (2017). Bendablesound: an elastic multisensory surface using touch-based interactions to assist children with severe autism during music therapy. International Journal of Human-Computer Studies, S1071581917300757.Search in Google Scholar
Chiu-Hsiang Lee, Chiung-Ling Lai, Yi-Hui Sung, Mei Yu Lai, Chung-Ying Lin, & Long-Yau Lin. (2017). Comparing effects between music intervention and aromatherapy on anxiety of patients undergoing mechanical ventilation in the intensive care unit: a randomized controlled trial. Quality of Life Research.Search in Google Scholar
D’Onofrio, K., Limb, C., Caldwell, M., & René Gifford. (2018). Musical emotion recognition in bimodal patients. The Journal of the Acoustical Society of America, 143(3), 1865-1865.Search in Google Scholar
Wang, S., Li, Y., Li, J., Wang, L., & Yang, S. (2020). Research on the effect of background music on spatial cognitive working memory based on cortical brain network. Sheng wu yi xue gong cheng xue za zhi = Journal of biomedical engineering = Shengwu yixue gongchengxue zazhi, 37(4), 587-595.Search in Google Scholar
Liu, Y. J., Yu, M., Zhao, G., Song, J., & Shi, Y. (2017). Real-time movie-induced discrete emotion recognition from eeg signals. IEEE Transactions on Affective Computing, PP(99), 1-1.Search in Google Scholar
Shoji, T., & Eiji, K. (2017). Dynamic reconfiguration of the supplementary motor area network during imagined music performance. Frontiers in Human Neuroscience, 11, 606-.Search in Google Scholar
Ugras, Gulay AltunYildirim, GuvenYuksel, SerpilOzturkcu, YusufKuzdere, MustafaOztekin, Seher Deniz. (2018). The effect of different types of music on patients’ preoperative anxiety: a randomized controlled trial. Complementary therapies in clinical practice, 31.Search in Google Scholar
Sorinas, J., Grima, M. D., Ferrandez, J. M., & Fernandez, E. (2019). Identifying suitable brain regions and trial size segmentation for positive/negative emotion recognition. International Journal of Neural Systems.Search in Google Scholar
Schneider, T. R., Hipp, J. F., Claudia, D., Christine, C., Büchel Christian, & Engel, A. K. (2018). Modulation of neuronal oscillatory activity in the beta- and gamma-band is associated with current individual anxiety levels. Neuroimage, 178, 423.Search in Google Scholar
Rajesh, S., & Nalini, N. J. (2020). Musical instrument emotion recognition using deep recurrent neural network. Procedia Computer Science, 167, 16-25.Search in Google Scholar
Chen, Y., Chang, R., & Guo, J. (2021). Emotion recognition of eeg signals based on the ensemble learning method: adaboost. Mathematical Problems in Engineering, 2021.Search in Google Scholar
Cristian Torres-Valencia, Mauricio Álvarez-López, & Álvaro Orozco-Gutiérrez. (2017). Svm-based feature selection methods for emotion recognition from multimodal data. Journal on Multimodal User Interfaces.Search in Google Scholar
Priyadharsini, S. S., & Rajan, S. E. (2012). An efficient soft-computing technique for extraction of eeg signal from tainted eeg signal. Applied Soft Computing(3), 12.Search in Google Scholar