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Facial expression recognition with automatic segmentation of face regions using a fuzzy based classification approach

机译:使用基于模糊的分类方法自动分割面部区域的面部表情识别

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This paper proposes a facial expression recognition algorithm that automatically detects the facial image contained in a color picture and segments it in two regions of interest (ROI)-the forehead eyes and the mouth which are then divided into non-overlapping N x M blocks. Next, the average of the first element of the cross correlation between 54 Gabor functions and each one of the N x M blocks is estimated to generate a matrix of dimension L x NM, where L is the number of training images. This matrix is then inserted into a principal component analysis (PCA) module for dimensionality reduction. Finally, the resulting matrix is used to generate the feature vectors, which are inserted into the proposed low complexity classifier based on clustering and fuzzy logic techniques. This classifier provides recognition rates close to those provided by other high performance classifiers, but with far less computational complexity. The experimental results show that proposed system achieves a recognition rate of about 97% when the feature vector from only one ROI is used, and that the recognition rate increases to approximately 99% when the feature vectors of both ROIs are used. This result means that the proposed method can achieve an overall recognition rate of approximately 97% even when one of the two ROIs is totally occluded. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文提出了一种面部表情识别算法,该算法可以自动检测彩色图片中包含的面部图像并将其分割为两个感兴趣的区域(ROI),即前额眼和嘴巴,然后将其分成不重叠的N x M块。接下来,估计54个Gabor函数与N x M个块中的每个块之间的互相关的第一元素的平均值,以生成尺寸为L x NM的矩阵,其中L是训练图像的数量。然后将此矩阵插入主成分分析(PCA)模块以降低尺寸。最后,将所得矩阵用于生成特征向量,然后将其插入基于聚类和模糊逻辑技术的低复杂度分类器中。该分类器提供的识别率与其他高性能分类器提供的识别率相近,但计算复杂度却低得多。实验结果表明,当仅使用来自一个ROI的特征向量时,所提出的系统可实现约97%的识别率,而同时使用两个ROI的特征向量时,识别率可提高至约99%。该结果意味着,即使完全遮挡了两个ROI中的一个,所提出的方法也可以实现大约97%的总体识别率。 (C)2016 Elsevier B.V.保留所有权利。

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