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Face Recognition via Domain Adaptation and Manifold Distance Metric Learning

机译:通过域自适应和流形距离度量学习的人脸识别

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A novel approach for face recognition via domain adaptation and manifold distance metric learning is presented in this paper. Recently, unconstrained face recognition is becoming a research hot in computer vision. For the non-independent and identically distributed data set, the maximum mean discrepancy algorithm in domain adaption learning is used to represent the difference between the training set and the test set. At the same time, assume that the same type of face data are distributed on the same manifold and the different types of face data are distributed on different manifolds, the face image set is used to model multiple manifolds and the distance between affine hulls is used to represent the distance between manifolds. At last, a projection matrix will be explored by maximizing the distance between manifolds and minimizing the difference between the training set and test set. A large number of experimental results on different face data sets show the efficiency of the proposed method.
机译:本文提出了一种通过域自适应和流形距离度量学习进行人脸识别的新方法。近来,不受约束的面部识别正成为计算机视觉中的研究热点。对于非独立且分布均匀的数据集,使用领域自适应学习中的最大均值差异算法来表示训练集和测试集之间的差异。同时,假设相同类型的面部数据分布在相同的流形上,而不同类型的面部数据分布在不同的流形上,则使用面部图像集对多个流形建模,并使用仿射船体之间的距离代表歧管之间的距离。最后,将通过最大化流形之间的距离并最小化训练集和测试集之间的差异来探索投影矩阵。在不同面部数据集上的大量实验结果表明了该方法的有效性。

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