HCMay 6, 2019

Emergent Leadership Detection Across Datasets

arXiv:1905.02058v117 citations
Originality Incremental advance
AI Analysis

This addresses the need for robust leadership detection systems in real-world applications by testing generalization across datasets, though it is incremental in extending existing methods to new evaluation settings.

The study tackled the problem of emergent leadership detection in small groups by evaluating cross-dataset generalization, showing that using pose and eye contact features achieved a cross-dataset accuracy of 0.68.

Automatic detection of emergent leaders in small groups from nonverbal behaviour is a growing research topic in social signal processing but existing methods were evaluated on single datasets -- an unrealistic assumption for real-world applications in which systems are required to also work in settings unseen at training time. It therefore remains unclear whether current methods for emergent leadership detection generalise to similar but new settings and to which extent. To overcome this limitation, we are the first to study a cross-dataset evaluation setting for the emergent leadership detection task. We provide evaluations for within- and cross-dataset prediction using two current datasets (PAVIS and MPIIGroupInteraction), as well as an investigation on the robustness of commonly used feature channels (visual focus of attention, body pose, facial action units, speaking activity) and online prediction in the cross-dataset setting. Our evaluations show that using pose and eye contact based features, cross-dataset prediction is possible with an accuracy of 0.68, as such providing another important piece of the puzzle towards emergent leadership detection in the real world.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes