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Pose invariant face recognition using biological inspired features based on ensemble of classifiers

机译:使用基于分类器集合的生物启发特征进行姿势不变的人脸识别

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摘要

This paper introduces a new method for view-independent face recognition by means of features inspired by the human's visual ventral stream and ensemble of classifiers. Several sets of scale and translation invariant features are first extracted. The feature vectors are then given to a new method of ensemble of classifiers. Diversity is a crucial condition for obtaining accurate ensembles. Diversity in our method is obtained by using bootstrapped replicas of the training vectors. Different training vectors are randomly drawn from the training vectors and are connected together to form diverse training sets. Experiments were performed to validate the method on the CMU-PIE and FERET face databases. Comparison with some of the most related methods indicates that the proposed method yields better recognition rate in view independent face recognition.
机译:本文介绍了一种新方法,该方法通过受人的视觉腹侧流和分类器集合启发的特征来实现与视图无关的面部识别。首先提取几组尺度和平移不变特征。然后将特征向量提供给分类器集成的新方法。多样性是获得准确合奏的关键条件。我们的方法中的多样性是通过使用训练向量的自举副本获得的。从训练向量中随机抽取不同的训练向量,并将它们连接在一起以形成不同的训练集。进行了实验,以在CMU-PIE和FERET人脸数据库上验证该方法。与一些最相关的方法进行比较表明,该方法在独立于视图的面部识别中产生了更好的识别率。

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