Figure

DOI:

https://doi.org/10.14483/23448393.17240

Published:

2021-05-30

Issue:

Vol. 26 No. 2 (2021): May - August

Section:

Systems Engineering

Restauración de imágenes borrosas usando un modelo regularizado de programación lineal

Research Blurred Image Restoration Using a Regularized Linear Programming Model

Authors

Keywords:

Image restoration, Inverse Problems, Linear programming, L1 norm based regularization (en).

Keywords:

Restauraci´on de im´agenes, problemas inversos, programaci´on lineal, regularizaci´on en norma L1 (es).

References

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How to Cite

APA

Exequiel Fuentes, J., and Ruiz Vera, J. M. (2021). Restauración de imágenes borrosas usando un modelo regularizado de programación lineal. Ingeniería, 26(2), 254–272. https://doi.org/10.14483/23448393.17240

ACM

[1]
Exequiel Fuentes, J. and Ruiz Vera, J.M. 2021. Restauración de imágenes borrosas usando un modelo regularizado de programación lineal. Ingeniería. 26, 2 (May 2021), 254–272. DOI:https://doi.org/10.14483/23448393.17240.

ACS

(1)
Exequiel Fuentes, J.; Ruiz Vera, J. M. Restauración de imágenes borrosas usando un modelo regularizado de programación lineal. Ing. 2021, 26, 254-272.

ABNT

EXEQUIEL FUENTES, José; RUIZ VERA, Jorge Mauricio. Restauración de imágenes borrosas usando un modelo regularizado de programación lineal. Ingeniería, [S. l.], v. 26, n. 2, p. 254–272, 2021. DOI: 10.14483/23448393.17240. Disponível em: https://revistas.udistrital.edu.co/index.php/reving/article/view/17240. Acesso em: 6 jul. 2026.

Chicago

Exequiel Fuentes, José, and Jorge Mauricio Ruiz Vera. 2021. “Restauración de imágenes borrosas usando un modelo regularizado de programación lineal”. Ingeniería 26 (2):254-72. https://doi.org/10.14483/23448393.17240.

Harvard

Exequiel Fuentes, J. and Ruiz Vera, J. M. (2021) “Restauración de imágenes borrosas usando un modelo regularizado de programación lineal”, Ingeniería, 26(2), pp. 254–272. doi: 10.14483/23448393.17240.

IEEE

[1]
J. Exequiel Fuentes and J. M. Ruiz Vera, “Restauración de imágenes borrosas usando un modelo regularizado de programación lineal”, Ing., vol. 26, no. 2, pp. 254–272, May 2021.

MLA

Exequiel Fuentes, José, and Jorge Mauricio Ruiz Vera. “Restauración de imágenes borrosas usando un modelo regularizado de programación lineal”. Ingeniería, vol. 26, no. 2, May 2021, pp. 254-72, doi:10.14483/23448393.17240.

Turabian

Exequiel Fuentes, José, and Jorge Mauricio Ruiz Vera. “Restauración de imágenes borrosas usando un modelo regularizado de programación lineal”. Ingeniería 26, no. 2 (May 30, 2021): 254–272. Accessed July 6, 2026. https://revistas.udistrital.edu.co/index.php/reving/article/view/17240.

Vancouver

1.
Exequiel Fuentes J, Ruiz Vera JM. Restauración de imágenes borrosas usando un modelo regularizado de programación lineal. Ing. [Internet]. 2021 May 30 [cited 2026 Jul. 6];26(2):254-72. Available from: https://revistas.udistrital.edu.co/index.php/reving/article/view/17240

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