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Mastersthesis Reference Estudio sobre el uso de sensores RGB-D para el conteo de personas y su caracterización
by Modesto Castrillón Santana published Jun 15, 2015 last modified Jun 17, 2015 09:55 AM
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Conference Reference Evaluation of LBP and HOG Descriptors for Clothing Attribute Description
by Modesto Castrillón Santana published Sep 09, 2014 last modified Sep 09, 2014 03:18 PM
In this work an experimental study about the capability of the LBP, HOG descriptors and color for clothing attribute classication is presented. Two dierent variants of the LBP descriptor are considered, the original LBP and the uniform LBP. Two classiers, Linear SVM and Random Forest, have been included in the comparison because they have been frequently used in clothing attributes classication. The experiments are carried out with a public available dataset, the clothing attribute dataset, that has 26 attributes in total. The obtained accuracies are over 75% in most cases, reaching 80% for the necktie or sleeve length attributes.
Located in Publicaciones / Publications
Inproceedings Reference Exploring the use of local descriptors for fish recognition in LIFECLEF 2015
by Modesto Castrillón Santana published Sep 17, 2015
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Inproceedings Reference Fusion of holistic and part based features for gender classification in the wild
by Modesto Castrillón Santana published Sep 17, 2015 last modified Sep 17, 2015 03:44 PM
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Mastersthesis Reference Gestor de Datos para Experimentación en Acuicultura
by Modesto Castrillón Santana published Jan 17, 2017 last modified Jan 24, 2019 10:09 AM
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Conference Reference Kinship Verification in the Wild: The First Kinship Verification Competition
by Modesto Castrillón Santana published Sep 09, 2014 last modified Jan 07, 2015 01:33 PM
Kinship verification from facial images in wild conditions is a relatively new and challenging problem in face analysis. Several datasets and algorithms have been proposed in recent years. However, most existing datasets are of small sizes and one standard evaluation protocol is still lack so that it is difficult to compare the performance of different kinship verification methods. In this paper, we present the Kinship Verification in the Wild Competition: the first kinship verification competition which is held in conjunction with the International Joint Conference on Biometrics 2014, Clearwater, Florida, USA. The key goal of this competition is to compare the performance of different methods on a new-collected dataset with the same evaluation protocol and develop the first standardized benchmark for kinship verification in the wild.
Located in Publicaciones / Publications
Inproceedings Reference MEG: Multi-Expert Gender classification from face images in a demographics-balanced dataset
by Modesto Castrillón Santana published Jun 15, 2015 last modified Sep 17, 2015 03:45 PM
In this paper we focus on gender classification from face images, which is still a challenging task in unrestricted scenarios. This task can be useful in a number of ways, e.g., as a preliminary step in biometric identity recognition supported by demographic information. We compare a feature based approach with two score based ones. In the former, we stack a number of feature vectors obtained by different operators, and train a SVM based on them. In the latter, we separately  compute the individual scores from the same operators, then either we feed them to a SVM, or exploit likelihood ratio based on a pairwise comparison of their answers. Experiments use EGA database, which presents a good balance with respect to demographic features of stored face images. As expected, feature level fusion achieves an often better classification performance but it is also quite computationally expensive. Our contribution has a threefold value: 1) the proposed   score level fusion approaches, though less demanding, achieve results which are rather similar or slightly better than feature level fusion, especially when a particular set of experts are fused; since experts are trained individually, it is not required to evaluate a complex multi-feature distribution and the training process is more efficient; 2) the number of uncertain cases significantly decreases; 3) the operators used are not computationally expensive in themselves.
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Article Reference MEG: Texture operators for multi-expert gender classification
by Modesto Castrillón Santana published Jan 17, 2017
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Article Reference Multi-scale score level fusion of local descriptors for gender classification in the wild
by Modesto Castrillón Santana published Jan 17, 2017
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Article Reference On using periocular biometric for gender classification in the wild
by Modesto Castrillón Santana published Nov 04, 2015 last modified Jan 17, 2017 11:27 AM
Located in Publicaciones / Publications