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Visual learning of texture descriptors for facial expression recognition in thermal imagery

机译:用于热图像中面部表情识别的纹理描述符的视觉学习

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摘要

Facial expression recognition is an active research area that finds a potential application in human emotion analysis. This work presents an illumination independent approach for facial expression recognition based on long wave infrared imagery. In general, facial expression recognition systems are designed considering the visible spectrum. This makes the recognition process not robust enough to be deployed in poorly illuminated environments. Common approaches to facial expression recognition of static images are designed considering three main parts: (1) region of interest selection, (2) feature extraction, and (3) image classification. Most published articles propose methodologies that solve each of these tasks in a decoupled way. We propose a Visual Learning approach based on evolutionary computation that solves the first two tasks simultaneously using a single evolving process. The first task consists in the selection of a set of suitable regions where the feature extraction is performed. The second task consists in tuning the parameters that defines the extraction of the Gray Level Co-occurrence Matrix used to compute region descriptors, as well as the selection of the best subsets of descriptors. The output of these two tasks is used for classification by a SVM committee. A dataset of thermal images with three different expression classes is used to validate the performance. Experimental results show effective classification when compared to a human observer, as well as a PCA-SVM approach. This paper concludes that: (1) thermal Imagery provides relevant information for FER, and (2) that the developed methodology can be taken as an efficient learning mechanism for different types of pattern recognition problems.
机译:面部表情识别是一个活跃的研究领域,可在人类情感分析中找到潜在的应用。这项工作提出了一种基于照明的独立方法,用于基于长波红外图像的面部表情识别。通常,面部表情识别系统是在考虑可见光谱的情况下设计的。这使得识别过程不够鲁棒,无法部署在照明不佳的环境中。设计静态图像的面部表情识别的常用方法时,要考虑以下三个主要部分:(1)感兴趣区域的选择,(2)特征提取和(3)图像分类。大多数发表的文章都提出了以分离的方式解决这些任务的方法。我们提出了一种基于进化计算的视觉学习方法,该方法使用一个演化过程同时解决了前两个任务。第一项任务是选择一组适当的区域,在这些区域中执行特征提取。第二项任务是调整参数,这些参数定义用于计算区域描述符的灰度共生矩阵的提取,以及选择描述符的最佳子集。这两个任务的输出由SVM委员会用于分类。具有三个不同表达类别的热图像数据集用于验证性能。与人类观察者相比,实验结果显示出有效的分类,以及PCA-SVM方法。本文的结论是:(1)热图像为FER提供了相关信息,并且(2)所开发的方法可以作为针对不同类型的模式识别问题的有效学习机制。

著录项

  • 来源
    《Computer vision and image understanding》 |2007年第3期|258-269|共1页
  • 作者单位

    Instituto de Astronomia, Universidad National Autonoma de Mexico, Ensenada B.C., Mexico;

    Departamento de Ciencias dc la Computation, Division de Fisica Aplicada, Centra de Investigation Cientifica y dc Education Superior dc Ensenada, Ensenada B C., Mexico Departamento de Informdtica, Univcrsidad de Extremadura en Merida, Espana;

    Delphi Electronics and Safety, Kokomo, IN, USA;

    Departamento de Ciencias dc la Computation, Division de Fisica Aplicada, Centra de Investigation Cientifica y dc Education Superior dc Ensenada, Ensenada B C., Mexico;

    Departamento de Ciencias dc la Computation, Division de Fisica Aplicada, Centra de Investigation Cientifica y dc Education Superior dc Ensenada, Ensenada B C., Mexico;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    facial expression recognition; evolutionary computation; co-occurrence matrix; support vector machine;

    机译:面部表情识别;进化计算共现矩阵;支持向量机;

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