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Main Authors: Mousavi, Seyed Muhammad Hossein, Ilanloo, Atiye
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.05330
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author Mousavi, Seyed Muhammad Hossein
Ilanloo, Atiye
author_facet Mousavi, Seyed Muhammad Hossein
Ilanloo, Atiye
contents Automatic emotion recognition has become increasingly important with the rise of AI, especially in fields like healthcare, education, and automotive systems. However, there is a lack of multimodal datasets, particularly involving body motion and physiological signals, which limits progress in the field. To address this, the MVRS dataset is introduced, featuring synchronized recordings from 13 participants aged 12 to 60 exposed to VR based emotional stimuli (relaxation, fear, stress, sadness, joy). Data were collected using eye tracking (via webcam in a VR headset), body motion (Kinect v2), and EMG and GSR signals (Arduino UNO), all timestamp aligned. Participants followed a unified protocol with consent and questionnaires. Features from each modality were extracted, fused using early and late fusion techniques, and evaluated with classifiers to confirm the datasets quality and emotion separability, making MVRS a valuable contribution to multimodal affective computing.
format Preprint
id arxiv_https___arxiv_org_abs_2509_05330
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MVRS: The Multimodal Virtual Reality Stimuli-based Emotion Recognition Dataset
Mousavi, Seyed Muhammad Hossein
Ilanloo, Atiye
Artificial Intelligence
Automatic emotion recognition has become increasingly important with the rise of AI, especially in fields like healthcare, education, and automotive systems. However, there is a lack of multimodal datasets, particularly involving body motion and physiological signals, which limits progress in the field. To address this, the MVRS dataset is introduced, featuring synchronized recordings from 13 participants aged 12 to 60 exposed to VR based emotional stimuli (relaxation, fear, stress, sadness, joy). Data were collected using eye tracking (via webcam in a VR headset), body motion (Kinect v2), and EMG and GSR signals (Arduino UNO), all timestamp aligned. Participants followed a unified protocol with consent and questionnaires. Features from each modality were extracted, fused using early and late fusion techniques, and evaluated with classifiers to confirm the datasets quality and emotion separability, making MVRS a valuable contribution to multimodal affective computing.
title MVRS: The Multimodal Virtual Reality Stimuli-based Emotion Recognition Dataset
topic Artificial Intelligence
url https://arxiv.org/abs/2509.05330