Age Classification is used in so many applications like crime detection, face detection and so on. . The age leads to significant variation in human face. The variation depends on many factors like gender, exposure to sunlight, drinking, weight loss or weight gain. In our paper the performance of face aging is established based on v pattern and Inverted v pattern by using the transition count of third order neighborhood. In our proposed method the age of the person is divided into 5 categories 1.Childhood (0-12years) 2.Young Adults (13-25years) 3.Middle Age Adults (26-40years) 4.Senior Adults (40-60years) 5.Senior Citizens (more than 60 years).The quantative evaluation and analysis is performed in our proposed method when compared to other existing methods after applying on 4 different facial image databases.
CITATION STYLE
Devi*, M. U., & Babu, U. R. (2019). Age Group Estimation Based on the Transition Count of 3rd Order Neighborhood using V and Inverted V Patterns. International Journal of Recent Technology and Engineering (IJRTE), 8(4), 8792–8796. https://doi.org/10.35940/ijrte.d9410.118419
Mendeley helps you to discover research relevant for your work.