Otwarty dostęp

Research on the optimization of emotion expression movement based on cognitive computing in dance creation

  
04 paź 2024

Zacytuj
Pobierz okładkę

Aristidou, A., Stavrakis, E., Papaefthimiou, M., Papagiannakis, G., & Chrysanthou, Y. (2018). Style-based motion analysis for dance composition. The visual computer, 34, 1725-1737. Search in Google Scholar

Bojner Horwitz, E., Lennartsson, A. K., Theorell, T. P., & Ullén, F. (2015). Engagement in dance is associated with emotional competence in interplay with others. Frontiers in Psychology, 6, 1096. Search in Google Scholar

Aristidou, A., Yiannakidis, A., Aberman, K., Cohen-Or, D., Shamir, A., & Chrysanthou, Y. (2022). Rhythm is a dancer: Music-driven motion synthesis with global structure. IEEE Transactions on Visualization and Computer Graphics, 29(8), 3519-3534. Search in Google Scholar

Wallace, B., Martin, C. P., Tørresen, J., & Nymoen, K. (2021, June). Learning embodied sound-motion mappings: Evaluating AI-generated dance improvisation. In Proceedings of the 13th Conference on Creativity and Cognition (pp. 1-9). Search in Google Scholar

Borowski, T. G. (2023). How dance promotes the development of social and emotional competence. Arts Education Policy Review, 124(3), 157-170. Search in Google Scholar

Burger, B., & Toiviainen, P. (2020). See how it feels to move: relationships between movement characteristics and perception of emotions in dance. Human Technology, 16(3), 233-256. Search in Google Scholar

Wang, S., & Tong, S. (2022). Analysis of high-level dance movements under deep learning and internet of things. The Journal of Supercomputing, 78(12), 14294-14316. Search in Google Scholar

Bernardi, N. F., Bellemare-Pepin, A., & Peretz, I. (2017). Enhancement of pleasure during spontaneous dance. Frontiers in Human Neuroscience, 11, 572. Search in Google Scholar

Bernal, G., & Maes, P. (2017, May). Emotional beasts: visually expressing emotions through avatars in VR. In Proceedings of the 2017 CHI conference extended abstracts on human factors in computing systems (pp. 2395-2402). Search in Google Scholar

Christensen, J. F., Cela‐Conde, C. J., & Gomila, A. (2017). Not all about sex: neural and biobehavioral functions of human dance. Annals of the New York Academy of Sciences, 1400(1), 8-32. Search in Google Scholar

Wang, S., Li, J., Cao, T., Wang, H., Tu, P., & Li, Y. (2020). D12a nce emotion recognition based on laban motion analysis using convolutional neural network and long short-term memory. IEEE Access, 8, 124928-124938. Search in Google Scholar

Van Dyck, E., Burger, B., & Orlandatou, K. (2017). The communication of emotions in dance. In The Routledge companion to embodied music interaction (pp. 122-130). Routledge. Search in Google Scholar

Lu, Y. (2022, February). Analysis of body and emotion in dance performance. In 2021 Conference on Art and Design: Inheritance and Innovation (ADII 2021) (pp. 46-50). Atlantis Press. Search in Google Scholar

Huang, Y. (2022). Comparative Analysis of Aesthetic Emotion of Dance Movement: A Deep Learning Based Approach. Computational Intelligence and Neuroscience, 2022, 5135495-5135495. Search in Google Scholar

Landry, S., & Jeon, M. (2020). Interactive sonification strategies for the motion and emotion of dance performances. Journal on Multimodal User Interfaces, 14(2), 167-186. Search in Google Scholar

Saumaa, H. (2022). Dance emotions. Integrative and Complementary Therapies, 28(3), 134-137. Search in Google Scholar

Maiorani, A. (2021). Emotion in motion: a kinesemiotics analysis of character interpretation through dance discourse. Rivista di psicolinguistica applicata: XXI, 2, 2021, 19-30. Search in Google Scholar

Burger, B., Thompson, M. R., Saarikallio, S., Luck, G., & Toiviainen, P. (2013). Oh happy dance: Emotion recognition in dance movement. In Proceedings of the 3rd International Conference on Music and Emotion. Jyväskylä, Finland: University of Jyväskylä. Search in Google Scholar

Karumuri, S., Niewiadomski, R., Volpe, G., & Camurri, A. (2019, May). From motions to emotions: classification of affect from dance movements using deep learning. In Extended Abstracts of the 2019 CHI Conference on Human Factors in Computing Systems (pp. 1-6). Search in Google Scholar

Yunlong Mi,Zongrun Wang,Pei Quan & Yong Shi. (2024). A semi-supervised concept-cognitive computing system for dynamic classification decision making with limited feedback information. European Journal of Operational Research(3),1123-1138. Search in Google Scholar

Youqiang Chen,Ridong Zhang & Furong Gao. (2024). Fault diagnosis of industrial process using attention mechanism with 3DCNN-LSTM. Chemical Engineering Science120059-. Search in Google Scholar

Zong-Sheng Wang,Jung Lee,Chang Geun Song & Sun-Jeong Kim. (2020). Efficient Chaotic Imperialist Competitive Algorithm with Dropout Strategy for Global Optimization. Symmetry(4),635-635. Search in Google Scholar

Zhang Yu,Zuo Xin,Zheng Xuxu,Gao Xiaoyong,Wang Bo & Hu Weiming. (2023). Improving metric-based few-shot learning with dynamically scaled softmax loss. Image and Vision Computing. Search in Google Scholar

Akbacak Enver. (2023). An efficient and robust supervised video hashing scheme based on a timedistributed CNN-BLSTM model and principal component analysis. Multimedia Tools and Applications(21), 60965-60985. Search in Google Scholar

Język:
Angielski
Częstotliwość wydawania:
1 razy w roku
Dziedziny czasopisma:
Nauki biologiczne, Nauki biologiczne, inne, Matematyka, Matematyka stosowana, Matematyka ogólna, Fizyka, Fizyka, inne