An Effective Age Classification Using Topological Features Based on Compressed and Reduced Grey Level Model of The Facial Skin

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Author(s)

V.Vijayakumar 1,* Jangala. Sasi Kiran 2 V.V. Hari Chandana 3

1. Computer Sciences, Anurag Group of Institutions, JNTUH, Hyderabad, A.P, India

2. MNR College of Engineering and Technology, Hyderabad, A.P, India.

3. Dept of. Computer Science and Engineering, S.R.M.University, Chennai, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2014.01.02

Received: 3 Aug. 2013 / Revised: 30 Aug. 2013 / Accepted: 2 Oct. 2013 / Published: 8 Nov. 2013

Index Terms

Topology, texture features, bone structure, geometrical changes, compressed model, grey value reduction

Abstract

The present paper proposes an innovative technique that classifies human age group in to five categories i.e 0 to 12, 13 to 25, 26 to 45, 46 to 60, and above 60 based on the Topological Texture Features (TTF) of the facial skin.  Most of the existing age classification problems in the literature usually derive various facial features on entire image and with large range of gray level values in order to achieve efficient and precise classification and recognition. This leads to lot of complexity in evaluating feature parameters. To address this, the present paper derives TTF’s on Second Order image Compressed and Fuzzy Reduced Grey level (SICFRG) model, which reduces the image dimension from 5 x 5 into 2 x 2 and grey level range without any loss of significant feature information. The present paper assumes that bone structural changes do not occur after the person is fully grown that is the geometric relationships of primary features do not vary. That is the reason secondary features i.e TTF’s are identified and exploited. In the literature few researchers worked on TTF for classification of age, but so far no research is implemented on reduced dimensionality model.  The proposed Second order Image Compressed and Fuzzy Reduced Grey level (SICFRG) model reduces overall complexity in recognizing and finding histogram of the TTF on the facial skin.  The experimental evidence on FG-NET aging database and Google Images clearly indicates the high classification rate of the proposed method.

Cite This Paper

V. Vijaya Kumar, Jangala. Sasi Kiran, V.V. Hari Chandana,"An Effective Age Classification Using Topological Features Based on Compressed and Reduced Grey Level Model of The Facial Skin", IJIGSP, vol.6, no.1, pp.9-17, 2014. DOI: 10.5815/ijigsp.2014.01.02

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