CVDec 31, 2018

Predicting Group Cohesiveness in Images

arXiv:1812.11771v434 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of automatically assessing group dynamics for applications in social psychology or surveillance, but it is incremental as it builds on existing group affect analysis methods.

The paper tackled predicting group cohesiveness from images by identifying visual cues and proposing a multi-task CNN with a capsule network for facial expression analysis, achieving near human-level performance on the new GAF-Cohesion database.

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.

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