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Teacher-directed learning in view-independent face recognition with mixture of experts using single-view eigenspaces

机译:基于视图的人脸识别中由教师指导的学习,使用单视图本征空间混合专家

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We propose a new model for view-independent face recognition by multiview approach. We use the so-called "mixture of experts", ME, in which, the problem space is divided into several subspaces for the experts, and the outputs of experts are combined by a gating network. In our model, instead of leaving the ME to partition the face space automatically, the ME is directed to adapt to a particular partitioning corresponding to predetermined views. To force an expert towards a specific view of face, in the representation layer, we provide each expert with its own eigenspace computed from the faces in the corresponding view. Furthermore, we use teacher-directed learning, TDL, in a way that according to the pose of the input training sample, only the weights of the corresponding expert are updated. The experimental results support our claim that directing the experts to a predetermined partitioning of face space improves the performance of the conventional ME for view-independent face recognition. In particular, for 1200 images of unseen intermediate views of faces from 20 subjects, the ME with single-view eigenspaces yields the average recognition rate of 80.51% in 10 trials, which is noticeably increased to 90.29% by applying the TDL method.
机译:我们提出了一种新的模型,用于通过多视图方法实现与视图无关的面部识别。我们使用所谓的“专家混合物” ME,其中,问题空间被划分为专家的几个子空间,并且专家的输出通过门控网络进行组合。在我们的模型中,不是让ME自动地划分面部空间,而是让ME适应与预定视图相对应的特定划分。为了迫使专家朝着特定的面孔视图,在表示层中,我们为每个专家提供了根据相应视图中的面孔计算出的自己的特征空间。此外,我们采用教师指导的学习方式TDL,根据输入的训练样本的姿势,仅更新相应专家的权重。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。特别是,对于来自20个对象的看不见的中间视图的1200张图像,具有单视图特征空间的ME在10个试验中产生80.51%的平均识别率,通过使用TDL方法可将其平均识别率提高到90.29%。

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