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SOCIAL RELATION RECOGNITION IN EGOCENTRIC PHOTOSTREAMS

Citation Author(s):
Petia Radeva, Mariella Dimiccoli
Submitted by:
Emanuel Sanchez...
Last updated:
24 September 2019 - 4:30am
Document Type:
Presentation Slides
Document Year:
2019
Event:
Presenters:
Mariella Dimiccoli
Paper Code:
3128
 

This paper proposes an approach to automatically categorize the social interactions of a user wearing a photo-camera (2fpm), by relying solely on what the camera is seeing. The problem is challenging due to the overwhelming complexity of social life and the extreme intra-class variability of social interactions captured under unconstrained conditions. We adopt the formalization proposed in Bugental’s social theory, that groups human relations into five social domains with related categories. Our method is a new deep learning architecture that exploits the hierarchical structure of the label space and relies on a set of social attributes estimated at frame level to provide a semantic representation of social interactions. Experimental results on the new EgoSocialRelation dataset demonstrate the effectiveness of our proposal.

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