Age Classification for work sustainability using SVM using Co-occurrence features on Fibonacci Weighted Neighborhood Pattern Matrix

Author:

Chandra Sekhar Reddy P.,Sarma K.S.R.K.,Raghunadha Reddy T.,Kodati Sarangam,Kumar Rajeev,Dhasaratham M.

Abstract

Computer vision systems are increasingly focusing on age recognition from facial images. To solve this problem, In this paper, proposed a method that computes the Fibonacci Weighted Neighborhood Pattern on an image to obtain local neighborhood information, then evaluates Co-occurrence features for work sustainability age classification with SVM classifier. These characteristics show how people’s ages differ. The proposed method has been tested on the FG-Net facial images dataset as well as other scanned images. Experiments showed that the proposed approach outperformed other currently existing methods.

Publisher

EDP Sciences

Subject

General Medicine

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