
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.

Sebastián Ayala Haro
Universidad de Guadalajara
0009-0007-9068-2365
Andrea Arellano García
Universidad de Guadalajara
0009-0008-2709-9473
Katia Daniela Ulloa Rivera
Universidad de Guadalajara
0009-0008-3225-3068
Alma Yolanda Alanis García
Universidad de Guadalajara
0000-0001-9600-779X
Maria Cristina Padilla Becerra
Universidad de Guadalajara
0009-0000-1530-0450
Pedro Misraim Gómez Rodríguez
Universidad de Guadalajara
0009-0006-3396-6292
Emilio Barajas González
Universidad de Guadalajara
0000-0002-0468-6244
Acerca de
This project presents the development of VigilEye, a prototype system for continuous monitoring of alertness in drivers on long journeys. This monitoring is performed by means of a camera through the analysis of eye movement patterns, with purpose of preventing automobile accidents. Implementation includes a gradual response protocol that includes sound alerts, visual signals and, in critical cases, controlled intervention of vehicle systems. VigilEye proposes a prototype of a two-stage system to respond to detection of decreased alertness in long-distance drivers. This system uses a detailed analysis of eye movements to detect signs of fatigue. In first stage, upon identifying that driver is showing signs of decreased alertness, system emits an acoustic signal to alert driver and stimulate an immediate reaction. If driver does not respond to this warning, system activates second stage of response in which vehicle turns on flashing lights to warn other drivers and simultaneously reduces speed progressively, in order to minimize risk of accidents and ensure safety on the road.
Referencias
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