Texture and Orientation-based Feature Extraction for Robust Facial Expression Recognition

Sajidullah S. Khan, Mohammed Bin Abdulrahman Alawairdhi, M. Al-Akhras
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Abstract

Facial expressions are the most effective way to characterize people’s motives, emotions, and feelings. Several new methods are proposed each year; however, the accuracy of facial expression recognition still needs to be improved especially in uncontrolled conditions. In this paper, we propose a hybrid facial expression model that considers both texture and orientation features to classify expressions. Two types of descriptors namely Local binary pattern and Weber local descriptor are used to preserve the local intensity information and orientation of edges. In the next step, computing the Histograms of oriented gradients (HOG) features from the Local binary pattern and Weber local descriptor images to capture micro-expressions. Then, the AdaBoost feature selection algorithm is utilized to choose the best features from the combined HOG features. The results of the experiments demonstrate that the method proposed in this study performs better than existing methods.
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基于纹理和方向的鲁棒面部表情识别特征提取
面部表情是刻画人们动机、情绪和感受的最有效方式。每年都会提出几种新方法;然而,面部表情识别的准确性仍有待提高,特别是在不受控制的情况下。本文提出了一种同时考虑纹理和方向特征的混合面部表情模型。利用局部二值模式和韦伯局部描述符来保持边缘的局部强度信息和方向。下一步,从局部二值模式和韦伯局部描述符图像中计算定向梯度直方图(HOG)特征来捕获微表情。然后,利用AdaBoost特征选择算法从组合HOG特征中选择最优特征;实验结果表明,本文提出的方法比现有方法具有更好的性能。
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