Results 1 -
1 of
1
Classification Accuracy of Neural Networks with PCA in Emotion Recognition
"... This paper presents classification accuracy of neural network with principal component analysis (PCA) for feature selections in emotion recognition using facial expressions. Dimensionality reduction of a feature set is a common preprocessing step used for pattern recognition and classification appli ..."
Abstract
- Add to MetaCart
This paper presents classification accuracy of neural network with principal component analysis (PCA) for feature selections in emotion recognition using facial expressions. Dimensionality reduction of a feature set is a common preprocessing step used for pattern recognition and classification applications. PCA is one of the popular methods used, and can be shown to be optimal using different optimality criteria. Experiment results, in which we achieved a recognition rate of approximately 85 % when testing six emotions on benchmark image data set, show that neural networks with PCA is effective in emotion recognition using facial expressions. Keywords: emotion recognition, feature selection, neural network, PCA. 2000 MSC: 68T45, 97P20, 97R40, 68T45.

