Please use this identifier to cite or link to this item: /library/oar/handle/123456789/132749
Title: Gender recognition from face images using trainable shape and color features
Authors: Azzopardi, George
Foggia, Pasquale
Greco, Antonio
Saggese, Alessia
Vento, Mario
Keywords: Human face recognition (Computer science) -- Technological innovations
Pattern recognition systems
Image processing -- Digital techniques
Computer vision -- Methodology
Human-computer interaction
Issue Date: 2018-08
Publisher: Institute of Electrical and Electronics Engineers
Citation: Azzopardi, G., Foggia, P., Greco, A., Saggese, A., & Vento, M. (2018, August). Gender recognition from face images using trainable shape and color features. 24th International conference on pattern recognition (ICPR), Beijing, China. 1983-1988.
Abstract: Gender recognition from face images is an important application and it is still an open computer vision problem, even though it is something trivial from the human visual system. Variations in pose, lighting, and expression are few of the problems that make such an application challenging for a computer system. Neurophysiological studies demonstrate that the human brain is able to distinguish men and women also in absence of external cues, by analyzing the shape of specific parts of the face. In this paper, we describe an automatic procedure that combines trainable shape and color features for gender classification. In particular the proposed method fuses edge-based and color-blob-based features by means of trainable COSFIRE filters. The former types of feature are able to extract information about the shape of a face whereas the latter extract information about shades of colors in different parts of the face. We use these two sets of features to create a stacked classification SVM model and demonstrate its effectiveness on the GENDER-COLORFERET dataset, where we achieve an accuracy of 96.4%.
URI: https://www.um.edu.mt/library/oar/handle/123456789/132749
Appears in Collections:Scholarly Works - FacICTAI

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