Intelligent Facial Emotion Recognition using modified-PSO
Journal: International Journal of Engineering and Techniques (Vol.3, No. 3)Publication Date: 2017-05-01
Authors : Sneha S. Mane K. R. Desai;
Page : 157-165
Keywords : Image pre-processing; Linear Binary Pattern (LBP); hvn-LBP; Feature Extraction; Feature Optimization; Emotion Recognition; PSO; SVM;
Abstract
In this paper, a facial emotion recognition technique is proposed. The proposed technique employs modified-LBP, which conduct horizontal and vertical neighbourhood pixel comparison, to generate a discriminative initial facial representation. Then, a modified-PSO, is proposed to perform feature optimization.[2] The Facial emotion recognition system consists of three steps: 1) Feature Extraction; 2) Feature Optimization; 3) Emotion Recognition. Firstly, we use modified local binary patterns (LBPs), i.e., horizontal and vertical neighbourhood comparison LBP, to extract the initial facial representation. Then, the proposed PSO algorithm is used to identify the most discriminative and significant features for differentiating distinct facial expressions. SVM(Support Vector Machine) and Multiple-SVM classifiers are used for recognizing six facial expressions.: 1) Happiness; 2) Sadness; 3) Anger; 4) Fear; 5) Surprise; 6) Disgust.
Other Latest Articles
- Wheat gluten proteolysis by enzyme preparations of directional action
- Parametric Design Analysis, Cost Optimization and Lifetime Estimation of a Three Phase, 300KVA Recycled Electric Distribution Transformer
- The Effects of Grape Seed Powder and Extract on Quality of Fermented Turkish Sausage
- Performance Analysis of DMD and SURF Methods for Texture Classification
- A Novel Finger Knuckle Print Recognition Algorithm Using Radon Coefficients
Last modified: 2018-05-19 18:28:00