학술논문

Child and Youth Affective Computing—Challenge Accepted
Document Type
Periodical
Source
IEEE Intelligent Systems IEEE Intell. Syst. Intelligent Systems, IEEE. 37(6):69-76 Jan, 2022
Subject
Computing and Processing
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Affective computing
Vocabulary
Target recognition
Computational modeling
Human computer interaction
Sociology
Pediatrics
Emotion recognition
Language
ISSN
1541-1672
1941-1294
Abstract
Affective computing has been shown effective and useful in a range of use cases by now, including human–computer interaction, emotionally intelligent tutoring, or depression monitoring. While these could be very useful to the younger among us—including in particular also earlier recognition of developmental disorders, usually research and even working demonstrators have been largely targeting an adult population. Only a few studies, including the first-ever competitive emotion challenge, were based on children’s data. In times where fairness is a dominating topic in the world of artificial intelligence, it seems timely to widen up to include children and youth more broadly as a user group and beneficiaries of the promises affective computing holds. To best support according to algorithmic and technological development, here, we summarize the emotional development of this group over the years, which poses considerable challenges for automatic emotion recognition, generation, and processing engines. We also provide a view on the steps to be taken to best cope with these, including drifting target learning, broadening up on the “vocabulary” of affective states modeled, transfer, few-shot, zero-shot, reinforced, and life-long learning in affective computing besides trustability.