Evaluación de la calidad del papel reciclado por descriptores de texturas

Authors

  • José Orlando Maldonado Bautista Universidad de Pamplona
  • Manuel Graña Romay Universidad del País Vasco

DOI:

https://doi.org/10.24054/rcta.v1i21.1894

Keywords:

Análisis de texturas, calidad del papel, reconocimiento de patrones

Abstract

En el proceso de inspección de calidad del papel reciclado, un defecto que se aprecia ocasionalmente es la aparición de ondulaciones en las hojas de papel a escala macroscópica, lo cual puede surgir algún tiempo después de su fabricación. Se ha denominado a dicho fenómeno abollado. En este trabajo se explora la detección y medida de dicho fenómeno mediante técnicas de tratamiento de imágenes, específicamente análisis de texturas combinadas con métodos de reconocimiento de patrones.

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Published

2022-11-08 — Updated on 2013-01-02

How to Cite

[1]
J. O. Maldonado Bautista and M. Graña Romay, “Evaluación de la calidad del papel reciclado por descriptores de texturas”, RCTA, vol. 1, no. 21, pp. 81–87, Jan. 2013.