Virginia Espinosa-Duró

CV
3papers
104citations
Novelty20%
AI Score17

3 Papers

CVMar 29, 2022
Face segmentation: A comparison between visible and thermal images

Jiri Mekyska, Virginia Espinosa-Duró, Marcos Faundez-Zanuy

Face segmentation is a first step for face biometric systems. In this paper we present a face segmentation algorithm for thermographic images. This algorithm is compared with the classic Viola and Jones algorithm used for visible images. Experimental results reveal that, when segmenting a multispectral (visible and thermal) face database, the proposed algorithm is more than 10 times faster, while the accuracy of face segmentation in thermal images is higher than in case of Viola-Jones

CVMar 30, 2022
Contribution of the Temperature of the Objects to the Problem of Thermal Imaging Focusing

Virginia Espinosa-Duró, Marcos Faundez-Zanuy, Jiri Mekyska

When focusing an image, depth of field, aperture and distance from the camera to the object, must be taking into account, both, in visible and in infrared spectrum. Our experiments reveal that in addition, the focusing problem in thermal spectrum is also hardly dependent of the temperature of the object itself (and/or the scene).

CVFeb 24, 2022
A new face database simultaneously acquired in visible, near infrared and thermal spectrum

Virginia Espinosa-Duró, Marcos Faundez-Zanuy, Jiří Mekyska

In this paper we present a new database acquired with three different sensors (visible, near infrared and thermal) under different illumination conditions. This database consists of 41 people acquired in four different acquisition sessions, five images per session and three different illumination conditions. The total amount of pictures is 7.380 pictures. Experimental results are obtained through single sensor experiments as well as the combination of two and three sensors under different illumination conditions (natural, infrared and artificial illumination). We have found that the three spectral bands studied contribute in a nearly equal proportion to a combined system. Experimental results show a significant improvement combining the three spectrums, even when using a simple classifier and feature extractor. In six of the nine scenarios studied we obtained identification rates higher or equal to 98%, when using a trained combination rule, and two cases of nine when using a fixed rule.