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Boosting facial expression recognition using LDGP ?? Local Distinctive Gradient Pattern

机译:使用LDGP促进面部表情识别局部独特的梯度模式

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Appearance based local feature methods are widely used for facial expression recognition because of their simplicity and high accuracy rates of recognition. However, the achieved accuracy rates and running time yet need to be improved. A new appearance based local feature method, called Local Distinctive Gradient Pattern (LDGP) is proposed in this paper. It derives two 4-bit local binary patterns from two different layers for a pixel by comparing the gray color intensity value of the pixel with its neighboring pixels in four distinct directions. Since each face image is divided into equal sized blocks, two histograms for the two 4-bit LDGP patterns of all pixels in each block can be constructed. The histograms of all blocks are then concatenated to build the feature vector for the given image. To evaluate the effectiveness of the proposed descriptor, experiments were conducted on the popular JAFFE dataset using Support Vector Machine (SVM) as the classifier. Extensive experimental results with seven prototype expressions show that proposed LDGP descriptor is superior to other appearance-based feature descriptors in terms of accuracy rates of recognition.
机译:基于外观的局部特征方法由于其简单性和高识别率而被广泛用于面部表情识别。但是,仍需要提高达到的准确率和运行时间。本文提出了一种新的基于外观的局部特征方法,称为局部区别梯度模式(LDGP)。它通过在四个不同方向上比较像素与其相邻像素的灰度强度值,从一个像素的两个不同层中得出两个4位局部二进制模式。由于每个面部图像被分成相等大小的块,因此可以为每个块中所有像素的两个4位LDGP模式构造两个直方图。然后将所有块的直方图连接起来,以建立给定图像的特征向量。为了评估提出的描述符的有效性,使用支持向量机(SVM)作为分类器,对流行的JAFFE数据集进行了实验。具有七个原型表达式的大量实验结果表明,所提出的LDGP描述符在识别准确率方面优于其他基于外观的特征描述符。

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