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Álvaro Martín
University of Salamanca
Spain
David Trejo
University of Salamanca
Spain
Alejandro Yagüe
University of Salamanca
Spain
José Sánchez
University of Salamanca
Spain
Vol. 8 No. 1 (2019), Articles, pages 49-54
DOI: https://doi.org/10.14201/ADCAIJ2019814954
Accepted: May 8, 2019
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Abstract

This paper presents a multi-agent system that is able to search people on a database of images recognizing patterns of facial features on each person, based on the main features of the face (eyes, nose and mouth). Using that multi-agent architecture, the system can do the work faster applying Fisherfaces algorithm for the face recognition and classification. This technology can be used for several purposes like specific ads in each user group to suit better their interests or search for the age and gender of people that usually go to different places like malls or shops.

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References

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