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Journal ArticleDOI

Facial expression recognition using constructive feedforward neural networks

L. Ma, +1 more
- Vol. 34, Iss: 3, pp 1588-1595
TLDR
A new technique for facial expression recognition is proposed, which uses the two-dimensional DCT over the entire face image as a feature detector and a constructive one-hidden-layer feedforward neural network as a facial expression classifier and the input-side weights of the constructed network are reduced by approximately 30% using the pruning method.
Abstract
A new technique for facial expression recognition is proposed, which uses the two-dimensional (2D) discrete cosine transform (DCT) over the entire face image as a feature detector and a constructive one-hidden-layer feedforward neural network as a facial expression classifier. An input-side pruning technique, proposed previously by the authors, is also incorporated into the constructive learning process to reduce the network size without sacrificing the performance of the resulting network. The proposed technique is applied to a database consisting of images of 60 men, each having five facial expression images (neutral, smile, anger, sadness, and surprise). Images of 40 men are used for network training, and the remaining images of 20 men are used for generalization and testing. Confusion matrices calculated in both network training and generalization for four facial expressions (smile, anger, sadness, and surprise) are used to evaluate the performance of the trained network. It is demonstrated that the best recognition rates are 100% and 93.75% (without rejection), for the training and generalizing images, respectively. Furthermore, the input-side weights of the constructed network are reduced by approximately 30% using our pruning method. In comparison with the fixed structure back propagation-based recognition methods in the literature, the proposed technique constructs one-hidden-layer feedforward neural network with fewer number of hidden units and weights, while simultaneously provide improved generalization and recognition performance capabilities.

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Citations
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Journal ArticleDOI

Facial Expression Recognition in Image Sequences Using Geometric Deformation Features and Support Vector Machines

TL;DR: Two novel methods for facial expression recognition in facial image sequences are presented, one based on deformable models and the other based on grid-tracking and deformation systems.
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Graph-Preserving Sparse Nonnegative Matrix Factorization With Application to Facial Expression Recognition

TL;DR: The results show that the GSNMF algorithm provides better facial representations and achieves higher recognition rates than nonnegative matrix factorization and is also more robust to partial occlusions than other tested methods.
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Recognizing Human Emotional State From Audiovisual Signals

TL;DR: A novel multiclassifier scheme is proposed to boost the recognition performance of human emotional state from audiovisual signals based on a comparative study of different classification algorithms and specific characteristics of individual emotion.
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Advances in Artificial Neural Networks – Methodological Development and Application

TL;DR: The future of artificial neural network development in tandem with support vector machines will be discussed in conjunction with further applications to food science and engineering, soil and water relationship for crop management, and decision support for precision agriculture.
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Automatic Facial Expression Recognition System Using Deep Network-Based Data Fusion

TL;DR: Simulation results validate that the proposed AFERS is more efficient as compared to the existing approaches and the recognition results obtained from fused features are found to be distinctly superior to both recognition using individual features as well as recognition with a direct concatenation of the individual feature vectors.
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