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FEATURE SELECTION USING ADABOOST FOR FACE EXPRESSION RECOGNITION

机译:使用ADABOOST进行面部表情识别的特征选择

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We propose a classification technique for face expression recognition using AdaBoost that learns by selecting the relevant global and local appearance features with the most discriminating information. Selectivity reduces the dimensionality of the feature space that in turn results in significant speed up during online classification. We compare our method with another leading margin-based classifier, the Support Vector Machines (SVM) and identify the advantages of using AdaBoost over SVM in this context. We use histograms of Gabor and Gaussian derivative responses as the appearance features. We apply our approach to the face expression recognition problem where local appearances play an important role. Finally, we show that though SVM performs equally well, AdaBoost feature selection provides a final hypothesis model that can easily be visualized and interpreted, which is lacking in the high dimensional support vectors of the SVM.
机译:我们提出了一种使用AdaBoost进行面部表情识别的分类技术,该技术可通过选择信息最多的相关全局和局部外观特征来进行学习。选择性降低了特征空间的维数,进而导致在线分类期间的显着加快。我们将我们的方法与另一个领先的基于余量的领先分类器支持向量机(SVM)进行了比较,并确定了在这种情况下使用AdaBoost优于SVM的优势。我们使用Gabor和高斯导数响应的直方图作为外观特征。我们将我们的方法应用于在局部外观中起重要作用的面部表情识别问题。最后,我们表明,尽管SVM的性能同样出色,但AdaBoost特征选择提供了最终的假设模型,可以轻松地对其进行可视化和解释,这是SVM的高维支持向量所缺乏的。

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