Beyond Gaze Overlap: Analyzing Joint Visual Attention Dynamics Using Egocentric Data
September 15, 2025 Β· Declared Dead Β· π IEEE International Conference on Information Reuse and Integration
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Authors
Kumushini Thennakoon, Yasasi Abeysinghe, Bhanuka Mahanama, Vikas Ashok, Sampath Jayarathna
arXiv ID
2509.12419
Category
cs.HC: Human-Computer Interaction
Citations
1
Venue
IEEE International Conference on Information Reuse and Integration
Last Checked
4 months ago
Abstract
Joint visual attention (JVA) provides informative cues on human behavior during social interactions. The ubiquity of egocentric eye-trackers and large-scale datasets on everyday interactions offer research opportunities in identifying JVA in multi-user environments. We propose a novel approach utilizing spatiotemporal tubes centered on attention rendered by individual gaze and detect JVA using deep-learning-based feature mapping. Our results reveal object-focused collaborative tasks to yield higher JVA (44-46%), whereas independent tasks yield lower (4-5%) attention. Beyond JVA, we analyze attention characteristics using ambient-focal attention coefficient K to understand the qualitative aspects of shared attention. Our analysis reveals $\mathcal{K}$ to converge instances where participants interact with shared objects while diverging when independent. While our study presents seminal findings on joint attention with egocentric commodity eye trackers, it indicates the potential utility of our approach in psychology, human-computer interaction, and social robotics, particularly in understanding attention coordination mechanisms in ecologically valid contexts.
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