Publications

Online affect tracking with multimodal kalman filters

Abstract

Arousal and valence have been widely used to represent emotions dimensionally and measure them continuously in time. In this paper, we introduce a computational framework for tracking these affective dimensions from multimodal data as an entry to the Multimodal Affect Recognition Sub-Challenge of the 2016 Audio/Visual Emotion Challenge and Workshop (AVEC2016). We propose a linear dynamical system approach with a late fusion method that accounts for the dynamics of the affective state evolution (i.e., arousal or valence). To this end, single-modality predictions are modeled as observations in a Kalman filter formulation in order to continuously track each affective dimension. Leveraging the inter-correlations between arousal and valence, we use the predicted arousal as an additional feature to improve valence predictions. Furthermore, we propose a conditional framework to select Kalman filters of …

Date
2016
Authors
Krishna Somandepalli, Rahul Gupta, Md Nasir, Brandon M Booth, Sungbok Lee, Shrikanth S Narayanan
Book
Proceedings of the 6th International Workshop on Audio/Visual Emotion Challenge
Pages
59-66