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Main Authors: Miranda, Jose A., Rituerto-González, Esther, Gutiérrez-Martín, Laura, Luis-Mingueza, Clara, Canabal, Manuel F., Bárcenas, Alberto Ramírez, Lanza-Gutiérrez, Jose M., Peláez-Moreno, Carmen, López-Ongil, Celia
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2203.00456
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author Miranda, Jose A.
Rituerto-González, Esther
Gutiérrez-Martín, Laura
Luis-Mingueza, Clara
Canabal, Manuel F.
Bárcenas, Alberto Ramírez
Lanza-Gutiérrez, Jose M.
Peláez-Moreno, Carmen
López-Ongil, Celia
author_facet Miranda, Jose A.
Rituerto-González, Esther
Gutiérrez-Martín, Laura
Luis-Mingueza, Clara
Canabal, Manuel F.
Bárcenas, Alberto Ramírez
Lanza-Gutiérrez, Jose M.
Peláez-Moreno, Carmen
López-Ongil, Celia
contents Among the seventeen Sustainable Development Goals (SDGs) proposed within the 2030 Agenda and adopted by all the United Nations member states, the Fifth SDG is a call for action to turn Gender Equality into a fundamental human right and an essential foundation for a better world. It includes the eradication of all types of violence against women. Within this context, the UC3M4Safety research team aims to develop Bindi. This is a cyber-physical system which includes embedded Artificial Intelligence algorithms, for user real-time monitoring towards the detection of affective states, with the ultimate goal of achieving the early detection of risk situations for women. On this basis, we make use of wearable affective computing including smart sensors, data encryption for secure and accurate collection of presumed crime evidence, as well as the remote connection to protecting agents. Towards the development of such system, the recordings of different laboratory and into-the-wild datasets are in process. These are contained within the UC3M4Safety Database. Thus, this paper presents and details the first release of WEMAC, a novel multi-modal dataset, which comprises a laboratory-based experiment for 47 women volunteers that were exposed to validated audio-visual stimuli to induce real emotions by using a virtual reality headset while physiological, speech signals and self-reports were acquired and collected. We believe this dataset will serve and assist research on multi-modal affective computing using physiological and speech information.
format Preprint
id arxiv_https___arxiv_org_abs_2203_00456
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle WEMAC: Women and Emotion Multi-modal Affective Computing dataset
Miranda, Jose A.
Rituerto-González, Esther
Gutiérrez-Martín, Laura
Luis-Mingueza, Clara
Canabal, Manuel F.
Bárcenas, Alberto Ramírez
Lanza-Gutiérrez, Jose M.
Peláez-Moreno, Carmen
López-Ongil, Celia
Human-Computer Interaction
Signal Processing
Among the seventeen Sustainable Development Goals (SDGs) proposed within the 2030 Agenda and adopted by all the United Nations member states, the Fifth SDG is a call for action to turn Gender Equality into a fundamental human right and an essential foundation for a better world. It includes the eradication of all types of violence against women. Within this context, the UC3M4Safety research team aims to develop Bindi. This is a cyber-physical system which includes embedded Artificial Intelligence algorithms, for user real-time monitoring towards the detection of affective states, with the ultimate goal of achieving the early detection of risk situations for women. On this basis, we make use of wearable affective computing including smart sensors, data encryption for secure and accurate collection of presumed crime evidence, as well as the remote connection to protecting agents. Towards the development of such system, the recordings of different laboratory and into-the-wild datasets are in process. These are contained within the UC3M4Safety Database. Thus, this paper presents and details the first release of WEMAC, a novel multi-modal dataset, which comprises a laboratory-based experiment for 47 women volunteers that were exposed to validated audio-visual stimuli to induce real emotions by using a virtual reality headset while physiological, speech signals and self-reports were acquired and collected. We believe this dataset will serve and assist research on multi-modal affective computing using physiological and speech information.
title WEMAC: Women and Emotion Multi-modal Affective Computing dataset
topic Human-Computer Interaction
Signal Processing
url https://arxiv.org/abs/2203.00456