FaceRNET: a Facial Expression Intensity Estimation Network
Kollias, Dimitrios, Psaroudakis, Andreas, Arsenos, Anastasios, Theofilou, Paraskevi
–arXiv.org Artificial Intelligence
This paper presents our approach for Facial Expression Intensity Estimation from videos. It includes two components: i) a representation extractor network that extracts various emotion descriptors (valence-arousal, action units and basic expressions) from each videoframe; ii) a RNN that captures temporal information in the data, followed by a mask layer which enables handling varying input video lengths through dynamic routing. This approach has been tested on the Hume-Reaction dataset yielding excellent results.
arXiv.org Artificial Intelligence
Oct-7-2023