@inproceedings{e212d5929b56478db73492bbe3e6fd9d,
title = "Predicting Group Cohesiveness in Images",
abstract = "The cohesiveness of a group is an essential indicator of the emotional state, structure and success of a group of people. We study the factors that influence the perception of group-level cohesion and propose methods for estimating the human-perceived cohesion on the group cohesiveness scale. In order to identify the visual cues (attributes) for cohesion, we conducted a user survey. Image analysis is performed at a group-level via a multi-task convolutional neural network. For analyzing the contribution of facial expressions of the group members for predicting the Group Cohesion Score (GCS), a capsule network is explored. We add GCS to the Group Affect database and propose the 'GAF-Cohesion database'. The proposed model performs well on the database and is able to achieve near human-level performance in predicting a group's cohesion score. It is interesting to note that group cohesion as an attribute, when jointly trained for group-level emotion prediction, helps in increasing the performance for the later task. This suggests that group-level emotion and cohesion are correlated.",
keywords = "Databases, Visualization, Task analysis, Bonding, Predictive models, Feature extraction, Annotations",
author = "Shreya Ghosh and Abhinav Dhall and Nicu Sebe and Tom Gedeon",
year = "2019",
month = jul,
doi = "10.1109/IJCNN.2019.8852184",
language = "English",
series = "Proceedings of the International Joint Conference on Neural Networks",
publisher = "Institute of Electrical and Electronics Engineers",
pages = "4498--4505",
booktitle = "2019 International Joint Conference on Neural Networks",
address = "United States",
note = "2019 International Joint Conference on Neural Networks : IJCNN 2019 ; Conference date: 14-07-2019 Through 19-07-2019",
}