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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Kernel discriminant transformation for image set-based face recognition
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Kernel discriminant transformation for image set-based face recognition

机译:基于图像集的人脸识别的核判别变换

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摘要

This study presents a novel kernel discriminant transformation (KDT) algorithm for face recognition based on image sets. As each image set is represented by a kernel subspace, we formulate a KDT matrix that maximizes the similarities of within-kernel subspaces, and simultaneously minimizes those of between-kernel subspaces. Although the KDT matrix cannot be computed explicitly in a high-dimensional feature space, we propose an iterative kernel discriminant transformation algorithm to solve the matrix in an implicit way. Another perspective of similarity measure, namely canonical difference, is also addressed for matching each pair of the kernel subspaces, and employed to simplify the formulation. The proposed face recognition system is demonstrated to outperform existing still-image-based as well as image set-based face recognition methods using the Yale Face database B, Labeled Faces in the Wild and a self-compiled database.
机译:本研究提出了一种基于图像集的人脸识别新的核判别变换(KDT)算法。由于每个图像集都由内核子空间表示,因此我们制定了一个KDT矩阵,该矩阵最大化了内核内子空间的相似性,同时又最小化了内核间子空间的相似性。尽管不能在高维特征空间中显式计算KDT矩阵,但我们提出了一种迭代核判别变换算法,以隐式方式求解矩阵。还讨论了相似性度量的另一个观点,即规范差异,用于匹配每对内核子空间,并用于简化公式。通过使用耶鲁人脸数据库B,“狂野中的标记人脸”和自编译数据库,证明了拟议的人脸识别系统优于现有的基于静止图像和基于图像集的人脸识别方法。

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