Método Eye tracking en la detección de somnolencia en conductores: Una revisión de literatura
DOI:
https://doi.org/10.32870/recibe.v15i1.439Palabras clave:
Eye tracking, somnolencia, rede neuronal, deep learning, procesamiento de imágenesResumen
En la presente investigación se realiza una revisión de literatura relacionada con el uso del método de Eye Tracking (seguimiento ocular) para la detección, obtención y análisis de perfiles de cansancio, el cual es uno de los factores de riesgo más presente en todo tipo de conductores, aumentando la probabilidad de causar accidentes. Para llevar a cabo esta revisión se utilizó la metodología PRISMA, que permite realizar una investigación exhaustiva, a través de la identificación, filtrado, elegibilidad e inclusión de los artículos que abordan la detección de somnolencia y cansancio en los conductores. Como resultado se elaboró una tabla de doble entrada de los estudios consultados en artículos científicos publicados en revistas de alto impacto, limitado a aquellos de reciente data período 2019 al 2025 con pertinencia y actualización de datos además de un aporte de evidencias empíricas en torno al objeto de estudio.Citas
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