English

Estimating Presentation Competence using Multimodal Nonverbal Behavioral Cues

Computer Vision and Pattern Recognition 2021-05-07 v1 Multimedia

Abstract

Public speaking and presentation competence plays an essential role in many areas of social interaction in our educational, professional, and everyday life. Since our intention during a speech can differ from what is actually understood by the audience, the ability to appropriately convey our message requires a complex set of skills. Presentation competence is cultivated in the early school years and continuously developed over time. One approach that can promote efficient development of presentation competence is the automated analysis of human behavior during a speech based on visual and audio features and machine learning. Furthermore, this analysis can be used to suggest improvements and the development of skills related to presentation competence. In this work, we investigate the contribution of different nonverbal behavioral cues, namely, facial, body pose-based, and audio-related features, to estimate presentation competence. The analyses were performed on videos of 251 students while the automated assessment is based on manual ratings according to the T\"ubingen Instrument for Presentation Competence (TIP). Our classification results reached the best performance with early fusion in the same dataset evaluation (accuracy of 71.25%) and late fusion of speech, face, and body pose features in the cross dataset evaluation (accuracy of 78.11%). Similarly, regression results performed the best with fusion strategies.

Keywords

Cite

@article{arxiv.2105.02636,
  title  = {Estimating Presentation Competence using Multimodal Nonverbal Behavioral Cues},
  author = {Ömer Sümer and Cigdem Beyan and Fabian Ruth and Olaf Kramer and Ulrich Trautwein and Enkelejda Kasneci},
  journal= {arXiv preprint arXiv:2105.02636},
  year   = {2021}
}
R2 v1 2026-06-24T01:50:17.298Z