Diseño de un sistema de reconocimiento de rostros aplicando inteligencia y visión artificial
DOI:
https://doi.org/10.24054/rcta.v2i24.1222Keywords:
Modelos activos, PCA, ICA, redes neuronales, NLPCA, robots de interacción socialAbstract
Este artículo presenta el diseño, desarrollo y la implementación de desarrollo de un sistema de reconocimiento de rostros mediante la hibridación de técnicas de reconocimientos de patrones, visión artificial e inteligencia artificial. La presente investigación recopila el producto de la unión de las técnicas de visión artificial y las técnicas de inteligencia artificial y sus implicaciones en múltiples aplicaciones tales como el control de robots de interacción social.
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