A Proxy-Based Method for Mapping Discrete Emotions onto VAD model
Michal R. Wrobel

TL;DR
This paper introduces a human-centric, proxy-based method using geometric animations to map discrete emotions onto the continuous VAD model, facilitating better data integration for affective computing.
Contribution
It presents a novel, survey-based approach that leverages user-generated animations as intermediaries to connect discrete emotion labels with the VAD space, overcoming previous mapping challenges.
Findings
Method is robust and validated through user studies
Generated comprehensive mapping between discrete and dimensional models
Facilitates data integration for affective computing applications
Abstract
Mapping discrete and dimensional models of emotion remains a persistent challenge in affective science and computing. This incompatibility hinders the combination of valuable data sets, creating a significant bottleneck for training robust machine learning models. To bridge this gap, this paper presents a novel, human-centric, proxy-based approach that transcends purely computational or direct mapping techniques. Implemented through a web-based survey, the method utilizes simple, user-generated geometric animations as intermediary artifacts to establish a correspondence between discrete emotion labels and the continuous valence-arousal-dominance (VAD) space. The approach involves a two-phase process: first, each participant creates an animation to represent a given emotion label (encoding); then, they immediately assess their own creation on the three VAD dimensions. The method was…
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Taxonomy
TopicsEmotion and Mood Recognition · Emotions and Moral Behavior · Social Robot Interaction and HRI
