Comparing Synchronicity in Body Movement among Jazz Musicians with Their Emotions
Author:
Bhave Anushka1, van Delden Josephine1, Gloor Peter A.1ORCID, Renold Fritz K.2
Affiliation:
1. MIT Center for Collective Intelligence, Cambridge, MA 02142, USA 2. Shanti Music Productions Renold & Co., 5012 Schönenwerd, Switzerland
Abstract
This paper presents novel preliminary research that investigates the relationship between the flow of a group of jazz musicians, quantified through multi-person pose synchronization, and their collective emotions. We have developed a real-time software to calculate the physical synchronicity of team members by tracking the difference in arm, leg, and head movements using Lightweight OpenPose. We employ facial expression recognition to evaluate the musicians’ collective emotions. Through correlation and regression analysis, we establish that higher levels of synchronized body and head movements correspond to lower levels of disgust, anger, sadness, and higher levels of joy among the musicians. Furthermore, we utilize 1-D CNNs to predict the collective emotions of the musicians. The model leverages 17 body synchrony keypoint vectors as features, resulting in a training accuracy of 61.47% and a test accuracy of 66.17%.
Funder
Swisslos Kanton Aarau Stadt Aarau Shanti Music Lagerhäuser Aarau Weinkellereien Aarau Cotra Autotransport White Socks Zehnder Migros Kulturprozent Avenira Stiftung Beisheim Stiftung F.G. Pfister kultur-Sozialstiftung Corona Stiftung Werner Siemens-Stiftung
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference51 articles.
1. Usman, M., Latif, S., and Qadir, J. (2017, January 27–28). Using deep autoencoders for facial expression recognition. Proceedings of the 13th International Conference on Emerging Technologies (ICET), Islamabad, Pakistan. 2. Guo, R., Li, S., He, L., Gao, W., Qi, H., and Owens, G. (2013, January 5–8). Pervasive and unobtrusive emotion sensing for human mental health. Proceedings of the 7th International Conference on Pervasive Computing Technologies for Healthcare and Workshops, Venice, Italy. 3. De Nadai, S., D’Incà, M., Parodi, F., Benza, M., Trotta, A., Zero, E., Zero, L., and Sacile, R. (2016, January 12–16). Enhancing safety of transport by road by on-line monitoring of driver emotions. Proceedings of the 11th System of Systems Engineering Conference (SoSE), Kongsberg, Norway. 4. Psychopathy and Physiological Detection of Concealed Information: A review;Verschuere;Psychol. Belg.,2006 5. Goldenberg, A., Garcia, D., Suri, G., Halperin, E., and Gross, J. (2017). The Psychology of Collective Emotions. OSF Prepr.
|
|