USO DE VISIÓN ARTIFICIAL CON OPENCV COMO SENSOR DE BARRERA EN UNA FAJA TRANSPORTADORA

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DOI:

https://doi.org/10.47190/nric.v4i1.3

Abstract

Las fajas transportadoras usan sensores de barrera ópticos basados en infrarrojos y de varilla para la detección de productos. Se implementa un sensor de barrera en una faja transportadora mediante captura y análisis de una cámara web. Se presenta un método simple y sencillo para implementar sensores de barrera por análisis de imágenes con el uso de OpenCV.

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References

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Published

2022-10-19

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Artículos