Publications
2019
1.
Olivera, Óscar García-Olalla; Fernández-Robles, Laura; Alegre, Enrique; Castejón-Limas, Manuel; Fidalgo, Eduardo
Boosting texture-based classification by describing statistical information of gray-levels differences Artículo de revista
En: Sensors, vol. 19, no 5, pp. 1048, 2019, (Publisher: MDPI).
Resumen | Enlaces | BibTeX | Etiquetas: CLOSIB, Local Binary Patterns, Statistica Information of Gray-Levels Differences, texture classification, texture description, Visual Sensors
@article{garcia-olalla_olivera_boosting_2019,
title = {Boosting texture-based classification by describing statistical information of gray-levels differences},
author = {Óscar García-Olalla Olivera and Laura Fernández-Robles and Enrique Alegre and Manuel Castejón-Limas and Eduardo Fidalgo},
url = {https://www.mdpi.com/1424-8220/19/5/1048},
year = {2019},
date = {2019-01-01},
journal = {Sensors},
volume = {19},
number = {5},
pages = {1048},
abstract = {This paper introduces a new texture descriptor booster, CLOSIB (Complete Local Oriented Statistical Information Booster), designed to enhance the discriminative power of texture descriptors like LBP. By using statistical information from image gray-level differences, the method improves texture classification. Variants such as Half-CLOSIB (H-CLOSIB) and Multi-scale CLOSIB (M-CLOSIB) offer increased efficiency and robustness. The method was tested on datasets like KTH TIPS, UIUC, USPTex, and JAFFE, showing improved classification accuracy when combined with LBP-based descriptors. Comparisons with recent algorithms show that CLOSIB variants provide competitive results.},
note = {Publisher: MDPI},
keywords = {CLOSIB, Local Binary Patterns, Statistica Information of Gray-Levels Differences, texture classification, texture description, Visual Sensors},
pubstate = {published},
tppubtype = {article}
}
This paper introduces a new texture descriptor booster, CLOSIB (Complete Local Oriented Statistical Information Booster), designed to enhance the discriminative power of texture descriptors like LBP. By using statistical information from image gray-level differences, the method improves texture classification. Variants such as Half-CLOSIB (H-CLOSIB) and Multi-scale CLOSIB (M-CLOSIB) offer increased efficiency and robustness. The method was tested on datasets like KTH TIPS, UIUC, USPTex, and JAFFE, showing improved classification accuracy when combined with LBP-based descriptors. Comparisons with recent algorithms show that CLOSIB variants provide competitive results.