Age Classification Using Motif and Statistical Features Derived On Gradient Facial Images

Author:

Reddy Ayaluri Mallikarjuna1,Krishna Vakulabharanam Venkata2,Sumalatha Lingamgunta3,Obulesh Avuku1

Affiliation:

1. Anurag Group of Institutions (Autonomous), Hyderabad, India

2. Vasavi College of Engineering, Hyderabad, India

3. University College of Engineering, JNTUK, Kakinada, Andhra Pradesh, India

Abstract

Background: Age estimation using face images has become increasingly significant in the recent years, due to diversity of potentially useful applications. Age group feature extraction, the local features, has received a great deal of attention. Objective: This paper derived a new age estimation operator called “Gradient Dual-Complete Motif Matrix (GD-CMM)” on the 3 x 3 neighborhood of gradient image. The GD-CMM divides the 3 x 3 neighborhood in to dual grids of size 2 x 2 each and on each 2 x 2 grid complete motif matrices are derived. Methods: The local features are extracted by using Motif Co-occurrence Matrix (MCM) and it is derived on 2 x 2 grid and the main disadvantage of this Motifs or Peano Scan Motifs (PSM) is they are static i.e. the initial position on a 2 x2 grid is fixed in deriving motifs, resulting with six different motifs. The advantage 3 x 3 neighborhood approaches over 2x 2 grids is the 3x3 grid identify the spatial relations among the pixels more precisely. The gradient images represent facial features more efficiently and human beings are more sensitive to gradient changes than original grey level intensities. Results: The proposed method is compared with other existing methods on FGNET, Google and scanned facial image databases. The experimental outcomes exhibited the superiority of proposed method than existing methods. Conclusion: On the GD-CMM, this paper derived co-occurrence features and machine learning classifiers are used for age group classification.

Publisher

Bentham Science Publishers Ltd.

Subject

General Computer Science

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