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Facial expression recognition in JAFFE and KDEF Datasets using histogram of oriented gradients and support vector machine

机译:使用面向导向梯度的直方图和支持向量机的jaffe和Kdef数据集中的面部表情识别

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This paper presents the used of histogram of oriented gradient (HOG) for facial expression recognition using support vector machine (SVM). In this work, the facial expression images are firstly preprocessed by face detection and cropped images. Then, HOG method is adopted as feature extraction on facial image. The ability of HOG to preserve the local information and orientation density distribution in facial images suitable as shape descriptor for facial expression. It divides the image into cell or patch that has magnitude and orientations. The extracted HOG was then concatenated into histogram bin to form one feature vector before feed into SVM classifier. Both JAFFE and KDEF datasets were employed to evaluate the performance of proposed method. Based on results, the average recognition rates of JAFFE and KDEF datasets are 76.19% and 80.95% respectively. The results show that the performance of expression surprise has outperformed compared to others expression while expression fear contributes the lowest recognition rate. Thus, utilization of HOG features with SVM classifier have shown the promising results in recognizing facial expression.
机译:本文介绍了使用支持向量机(SVM)对面部表情识别的面向梯度(HOG)直方图的使用。在这项工作中,首先通过面部检测和裁剪图像预处理面部表情图像。然后,采用HOG方法作为面部图像的特征提取。猪在面部图像中保持局部信息和取向密度分布的能力,适用于面部表情的形状描述符。它将图像划分为具有幅度和方向的单元格或贴片。然后将提取的猪连接到直方图箱中以在进料到SVM分类器之前形成一个特征载体。 jaffe和kdef数据集都被采用来评估所提出的方法的性能。基于结果,贾维埃和KDEF数据集的平均识别率分别为76.19%和80.95%。结果表明,与其他表达表达相比,表达式惊喜的性能表现优于表达恐惧的贡献最低的识别率。因此,具有SVM分类器的HOG特征的利用表明了识别面部表情的有希望的结果。

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