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Improving mixture of experts for view-independent face recognition using teacher-directed learning

机译:使用教师指导的学习,改善与视图无关的面部识别专家的混合

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In this paper we develop a new learning method, called teacher-directed learning (TDL), for mixture of experts (ME) to perform view-independent face recognition. In the basic form of ME the problem space is automatically divided into several subspaces for the experts, and the outputs of experts are combined by a gating network. In our proposed method, the ME is directed to adapt to a particular partitioning corresponding to predetermined views. To do this, we apply a new learning method to ME, called TDL, in a way that according to the pose of the input training sample, only the weights of the corresponding experts are updated. We apply TDL to MEs, composed of MLP experts and a radial basis function gating network, with different representation schemes: global, single-view and overlapping eigenspace. We test them with previously intermediate unseen views of faces. The experimental results support our claim that directing the experts to a predetermined partitioning of the face space improves the performance of the conventional ME for view-independent face recognition. Comparison with some of the most related methods indicates that the proposed model yields excellent recognition rate in view-independent face recognition.
机译:在本文中,我们开发了一种新的学习方法,称为教师指导的学习(TDL),用于混合专家(ME)来执行与视图无关的人脸识别。在ME的基本形式中,问题空间被专家自动划分为几个子空间,专家的输出通过门控网络进行组合。在我们提出的方法中,ME被定向为适应于对应于预定视图的特定分区。为此,我们对ME应用了一种称为TDL的新学习方法,即根据输入的训练样本的姿势,仅更新相应专家的权重。我们将TDL应用于由MLP专家和径向基函数门控网络组成的ME,具有不同的表示方案:全局,单视图和重叠本征空间。我们使用以前看不见的中间面孔来测试它们。实验结果支持了我们的主张,即将专家引导到面部空间的预定分区可以改善常规ME用于独立于视图的面部识别的性能。与一些最相关的方法进行比较表明,所提出的模型在与视图无关的面部识别中产生了出色的识别率。

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