From the Lab to the Wild: Affect Modeling via Privileged Information

05/18/2023
by   Konstantinos Makantasis, et al.
0

How can we reliably transfer affect models trained in controlled laboratory conditions (in-vitro) to uncontrolled real-world settings (in-vivo)? The information gap between in-vitro and in-vivo applications defines a core challenge of affective computing. This gap is caused by limitations related to affect sensing including intrusiveness, hardware malfunctions and availability of sensors. As a response to these limitations, we introduce the concept of privileged information for operating affect models in real-world scenarios (in the wild). Privileged information enables affect models to be trained across multiple modalities available in a lab, and ignore, without significant performance drops, those modalities that are not available when they operate in the wild. Our approach is tested in two multimodal affect databases one of which is designed for testing models of affect in the wild. By training our affect models using all modalities and then using solely raw footage frames for testing the models, we reach the performance of models that fuse all available modalities for both training and testing. The results are robust across both classification and regression affect modeling tasks which are dominant paradigms in affective computing. Our findings make a decisive step towards realizing affect interaction in the wild.

READ FULL TEXT

page 6

page 9

page 10

page 13

research
07/22/2021

Privileged Information for Modeling Affect In The Wild

A key challenge of affective computing research is discovering ways to r...
research
03/20/2021

Overprotective Training Environments Fall Short at Testing Time: Let Models Contribute to Their Own Training

Despite important progress, conversational systems often generate dialog...
research
07/31/2022

Towards Intercultural Affect Recognition: Audio-Visual Affect Recognition in the Wild Across Six Cultures

In our multicultural world, affect-aware AI systems that support humans ...
research
08/25/2022

Supervised Contrastive Learning for Affect Modelling

Affect modeling is viewed, traditionally, as the process of mapping meas...
research
08/17/2021

Affect-Aware Deep Belief Network Representations for Multimodal Unsupervised Deception Detection

Automated systems that detect the social behavior of deception can enhan...
research
02/03/2020

Adversarial-based neural network for affect estimations in the wild

There is a growing interest in affective computing research nowadays giv...

Please sign up or login with your details

Forgot password? Click here to reset