Muestra métricas de impacto externas asociadas a la publicación. Para mayor detalle:
| Indexado |
|
||||
| DOI | 10.1016/J.ESWA.2017.07.039 | ||||
| Año | 2017 | ||||
| Tipo | artículo de investigación |
Citas Totales
Autores Afiliación Chile
Instituciones Chile
% Participación
Internacional
Autores
Afiliación Extranjera
Instituciones
Extranjeras
A new descriptor for the verification of people's identity through the analysis of handwritten text is presented. The proposed descriptor corresponds to a representation of the pattern of writing pressure computed from the grayscale image of a handwritten stroke. Specifically, the descriptor corresponds to the relative position of the minimum gray value points within the stroke. A repository of images for 50 people was created. Each person wrote 50 samples of 6 different symbols which resulted in a total of 15,000 images to carry out the experiments. For each individual's identity verification, a supervised classifier for non-linearly separable data of the Support Vector Machine type was used, which resulted in the training of a total of 50 classifiers. 50 groups of balanced data were created through the sub-sampling of the majority class for the proper training of the classifiers. Furthermore, K-Fold Cross Validation was used to assess objectively the descriptor performance. The results of the assessment are positive: a hit rate average higher than 95% was achieved for the six analyzed symbols to verify identity. The overall proposal of the paper is interesting because it presents a method based on the processing of very simple characters (the characters are notoriously simpler than a signature). The proposed descriptor has the advantage of being invariant to rotation, which makes the process robust to involuntary changes in the inclination of the sheet containing the strokes. Besides, the descriptor is invariant to scale, as it considers the obtained sign length resizing. This makes the process robust to characters written with different sizes. (C) 2017 Elsevier Ltd. All rights reserved.
| Ord. | Autor | Género | Institución - País |
|---|---|---|---|
| 1 | Aubin, Veronica | Mujer |
Univ Natl La Matanza - Argentina
UNIV COMPLUTENSE MADRID - España Universidad Nacional de La Matanza - Argentina Universidad Complutense de Madrid - España |
| 2 | MORA-COFRE, MARCO ANTONIO | Hombre |
Universidad Católica del Maule - Chile
|
| Fuente |
|---|
| Proyecto de Redes IX "Red para la Investigacion e Innovacion Tecnologica en Reconocimiento de Patrones" (Network for Research and Technological Innovation in Pattern Recognition), Secretaria de |
| Project FONDEF IDeA en 2 Etapas, "Estimacion del Contenido de Aceite en Olivas en base a Tecnologias no Destructivas" (Olive Oil Content Estimation based on non Destructive Technologies), (FONDEF), Government of Chile |
| Agradecimiento |
|---|
| The authors of this paper thank the financial support of the following 2 research projects. The first one is Project FONDEF IDeA en 2 Etapas ID15i10142, "Estimacion del Contenido de Aceite en Olivas en base a Tecnologias no Destructivas" (Olive Oil Content Estimation based on non Destructive Technologies), Scientific and Technological Development Support Fund (FONDEF), Government of Chile. The second one is Proyecto de Redes IX "Red para la Investigacion e Innovacion Tecnologica en Reconocimiento de Patrones" (Network for Research and Technological Innovation in Pattern Recognition), Secretaria de Politicas Universitarias, Ministry of Education and Sports, Argentina. Finally, thanks to computer engineers Karen Hodges and Gonzalo Pena of the Universidad Catolica del Maule for their invaluable collaboration and work in this research. |