Learning to identify facial expression during detection using Markov decision process

Ramana Isukapalli, A. Elgammal, R. Greiner
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引用次数: 3

Abstract

While there has been a great deal of research in face detection and recognition, there has been very limited work on identifying the expression on a face. Many current face detection methods use a Viola-Jones style "cascade" of Adaboost-based classifiers to detect faces. We demonstrate that faces with similar expression form "clusters" in a "classifier space" defined by the real-valued outcomes of these classifiers on the images and address the task of using these classifiers to classify a new image into the appropriate cluster (expression). We formulate this as a Markov decision process and use dynamic programming to find an optimal policy - here a decision tree whose internal nodes each correspond to some classifier, whose arcs correspond to ranges of classifier values, and whose leaf nodes each correspond to a specific facial expression, augmented with a sequence of additional classifiers. We present empirical results that demonstrate that our system accurately determines the expression on a face during detection
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学习识别面部表情在检测中使用马尔可夫决策过程
虽然在人脸检测和识别方面已经有了大量的研究,但在识别人脸表情方面的工作却非常有限。许多当前的人脸检测方法使用Viola-Jones风格的基于adaboost分类器的“级联”来检测人脸。我们证明了具有相似表情的人脸在由这些分类器对图像的实值结果定义的“分类器空间”中形成“簇”,并解决了使用这些分类器将新图像分类到适当的簇(表达)中的任务。我们将其表述为马尔可夫决策过程,并使用动态规划来找到最优策略——这里是一棵决策树,其内部节点每个对应于某个分类器,其弧线对应于分类器值的范围,其叶节点每个对应于特定的面部表情,并增加了一系列额外的分类器。我们提出的实证结果表明,我们的系统在检测过程中准确地确定了面部表情
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