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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >Feature Extraction Through Cross-Phase Congruency for Facial Expression Analysis
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Feature Extraction Through Cross-Phase Congruency for Facial Expression Analysis

机译:跨阶段一致性的面部表情分析特征提取

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摘要

Human face analysis has attracted a large number of researchers from various fields, such as computer vision, image processing, neurophysiology or psychology. One of the particular aspects of human face analysis is encompassed by facial expression recognition task. A novel method based on phase congruency for extracting the facial features used in the facial expression classification procedure is developed. Considering a set of image samples comprising humans expressing various expressions, this new approach computes the phase congruency map between the samples. The analysis is performed in the frequency space where the similarity (or dissimilarity) between sample phases is measured to form discriminant features. The experiments were run using samples from two facial expression databases. To assess the method's performance, the technique is compared to the state-of-the art techniques utilized for classifying facial expressions, such as Principal Component Analysis (PCA), Independent Component Analysis (ICA), Linear Discriminant Analysis (LDA), and Gabor jets. The features extracted by the aforementioned techniques are further classified using two classifiers: a distance-based classifier and a Support Vector Machine-based classifier. Experiments reveal superior facial expression recognition performance for the proposed approach with respect to other techniques.
机译:人脸分析吸引了来自各个领域的大量研究人员,例如计算机视觉,图像处理,神经生理学或心理学。面部表情识别任务涵盖了人脸分析的特定方面之一。提出了一种基于相位一致性的人脸表情分类程序中提取人脸特征的新方法。考虑一组包括表达各种表达的人类的图像样本,该新方法计算了样本之间的相位一致性图。分析是在频率空间中执行的,在该频率空间中测量采样相位之间的相似性(或不相似性)以形成判别特征。使用来自两个面部表情数据库的样本进行实验。为了评估该方法的性能,将其与用于对面部表情进行分类的最新技术进行了比较,例如主成分分析(PCA),独立成分分析(ICA),线性判别分析(LDA)和Gabor喷气机。通过上述技术提取的特征使用两个分类器进一步分类:基于距离的分类器和基于支持向量机的分类器。实验表明,相对于其他技术,该方法具有更好的面部表情识别性能。

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