Artículo de revista
Gender Classification Based on Fusion of Different Spatial Scale Features Selected by Mutual Information From Histogram of LBP, Intensity, and Shape
Fecha
2013-06-12Registro en:
IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, VOL. 8, NO. 3
0176-1714
Autor
Tapia, Juan E.
Pérez Flores, Claudio
Institución
Resumen
In this paper, we report our extension of the use of
feature selection based on mutual information and feature fusion
to improve gender classification of face images. We compare the
results of fusing three groups of features, three spatial scales, and
four different mutual information measures to select features.
We also showed improved results by fusion of LBP features with
different radii and spatial scales, and the selection of features using
mutual information. As measures of mutual information we use
minimum redundancy and maximal relevance (mRMR), normalized
mutual information feature selection (NMIFS), conditional
mutual information feature selection (CMIFS), and conditional
mutual information maximization (CMIM). We tested the results
on four databases: FERET and UND, under controlled conditions,
the LFW database under unconstrained scenarios, and AR for
occlusions. It is shown that selection of features together with
fusion of LBP features significantly improved gender classification
accuracy compared to previously published results. We also show
a significant reduction in processing time because of the feature
selection, which makes real-time applications of gender classification
feasible.