
ISBN
Formato digital
979-13-87837-54-9
Fecha de publicación
06-10-2025
Licencia
D. R. © Copyright 2025. Alma Y. Alanis, Jorge Galvez, Omar Avalos, Eduardo Méndez-Palos, Jorge D. Rios, Adriana Peña Perez-Negron & Gabriel Martínez Soltero
Todos los contenidos de esta obra se comparten bajo la licencia Creative Commons Atri-bución/Reconocimiento-NoComercial-CompartirIgual 4.0 Internacional (CC BY-NC-SA 4.0). Esto implica que no está autorizado el uso comercial de la obra original ni de las eventuales obras derivadas, las cuales deberán distribuirse bajo la misma licencia que rige la obra original. No obstante, se permite a terceros compartir el contenido siempre y cuando se reconozca debidamente la autoría y la publicación original en esta editorial.

Luis J. G. Coria
Universidad de Guadalajara
0009-0005-0174-8939
Karly Martínez Juan
Universidad de Guadalajara
0009-0006-3265-5863
Paola Samantha Gonzalez Chávez
Universidad de Guadalajara
0009-0003-9833-1472
Ricardo E. García Manzo
Universidad de Guadalajara
0000-0002-1210-3459
Acerca de
Monitoring physiological signals using biomedical devices has experienced significant growth due to its wide range of applications in various fields, such as Health and Education. This work reports on implementation of a physiological data acquisition system based on the Mehrabian and Russell model, associating emotional dimensions with specific parameters: valence (heart rate), activation (skin conductance), and dominance (temperature). System allows interpretation of human emotional states, including happiness, anger, fear, and sadness, using standardized stimulations from International Affe tive Picture System (IAPS) and Digital Affective Sounds (IADS).
Referencias
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