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Bibliographic Details
Main Authors: Herbuela, Von Ralph Dane Marquez, Nagai, Yukie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.09402
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author Herbuela, Von Ralph Dane Marquez
Nagai, Yukie
author_facet Herbuela, Von Ralph Dane Marquez
Nagai, Yukie
contents Many individuals especially those with autism spectrum disorder (ASD), alexithymia, or other neurodivergent profiles face challenges in recognizing, expressing, or interpreting emotions. To support more inclusive and personalized emotion technologies, we present a real-time multimodal emotion estimation system that combines neurophysiological EEG, ECG, blood volume pulse (BVP), and galvanic skin response (GSR/EDA) and behavioral modalities (facial expressions, and speech) in a unified arousal-valence 2D interface to track moment-to-moment emotional states. This architecture enables interpretable, user-specific analysis and supports applications in emotion education, neuroadaptive feedback, and interaction support for neurodiverse users. Two demonstration scenarios illustrate its application: (1) passive media viewing (2D or VR videos) reveals cortical and autonomic responses to affective content, and (2) semi-scripted conversations with a facilitator or virtual agent capture real-time facial and vocal expressions. These tasks enable controlled and naturalistic emotion monitoring, making the system well-suited for personalized feedback and neurodiversity-informed interaction design.
format Preprint
id arxiv_https___arxiv_org_abs_2508_09402
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Realtime Multimodal Emotion Estimation using Behavioral and Neurophysiological Data
Herbuela, Von Ralph Dane Marquez
Nagai, Yukie
Human-Computer Interaction
Many individuals especially those with autism spectrum disorder (ASD), alexithymia, or other neurodivergent profiles face challenges in recognizing, expressing, or interpreting emotions. To support more inclusive and personalized emotion technologies, we present a real-time multimodal emotion estimation system that combines neurophysiological EEG, ECG, blood volume pulse (BVP), and galvanic skin response (GSR/EDA) and behavioral modalities (facial expressions, and speech) in a unified arousal-valence 2D interface to track moment-to-moment emotional states. This architecture enables interpretable, user-specific analysis and supports applications in emotion education, neuroadaptive feedback, and interaction support for neurodiverse users. Two demonstration scenarios illustrate its application: (1) passive media viewing (2D or VR videos) reveals cortical and autonomic responses to affective content, and (2) semi-scripted conversations with a facilitator or virtual agent capture real-time facial and vocal expressions. These tasks enable controlled and naturalistic emotion monitoring, making the system well-suited for personalized feedback and neurodiversity-informed interaction design.
title Realtime Multimodal Emotion Estimation using Behavioral and Neurophysiological Data
topic Human-Computer Interaction
url https://arxiv.org/abs/2508.09402