首页> 外文期刊>IEEE transactions on information forensics and security >Subspace Approximation of Face Recognition Algorithms: An Empirical Study
【24h】

Subspace Approximation of Face Recognition Algorithms: An Empirical Study

机译:人脸识别算法的子空间近似:一项实证研究

获取原文
获取原文并翻译 | 示例
           

摘要

We present a theory for constructing linear subspace approximations to face-recognition algorithms and empirically demonstrate that a surprisingly diverse set of face-recognition approaches can be approximated well by using a linear model. A linear model, built using a training set of face images, is specified in terms of a linear subspace spanned by, possibly nonorthogonal vectors. We divide the linear transformation used to project face images into this linear subspace into two parts: 1) a rigid transformation obtained through principal component analysis, followed by a nonrigid, affine transformation. The construction of the affine subspace involves embedding of a training set of face images constrained by the distances between them, as computed by the face-recognition algorithm being approximated. We accomplish this embedding by iterative majorization, initialized by classical MDS. Any new face image is projected into this embedded space using an affine transformation. We empirically demonstrate the adequacy of the linear model using six different face-recognition algorithms, spanning template-based and feature-based approaches, with a complete separation of the training and test sets. A subset of the face-recognition grand challenge training set is used to model the algorithms and the performance of the proposed modeling scheme is evaluated on the facial recognition technology (FERET) data set. The experimental results show that the average error in modeling for six algorithms is 6.3% at 0.001 false acceptance rate for the FERET fafb probe set which has 1195 subjects, the most among all of the FERET experiments. The built subspace approximation not only matches the recognition rate for the original approach, but the local manifold structure, as measured by the similarity of identity of nearest neighbors, is also modeled well. We found, on average, 87% similarity of the local neighborhood. We also demonstrate the usefulness of the linear model for algorithm-depe-n-nndent indexing of face databases and find that it results in more than 20 times reduction in face comparisons for Bayesian, elastic bunch graph matching, and one proprietary algorithm.
机译:我们提出了一种构造人脸识别算法的线性子空间近似的理论,并通过经验证明了可以通过使用线性模型很好地近似一组令人惊讶的人脸识别方法。使用由可能的非正交向量跨越的线性子空间来指定使用面部图像训练集构建的线性模型。我们将用于将人脸图像投影到此线性子空间中的线性变换分为两部分:1)通过主成分分析获得的刚性变换,然后进行非刚性仿射变换。仿射子空间的构建涉及嵌入受其间距离约束的面部图像训练集,该训练集由近似的面部识别算法计算。我们通过经典MDS初始化的迭代主化来完成此嵌入。使用仿射变换将任何新的面部图像投影到此嵌入式空间中。我们通过六种不同的面部识别算法以经验为基础证明了线性模型的适用性,这些算法涵盖了基于模板的方法和基于特征的方法,并且完全分离了训练和测试集。使用面部识别大挑战训练集的子集对算法进行建模,并在面部识别技术(FERET)数据集上评估提出的建模方案的性能。实验结果表明,在具有1195个主题的FERET fafb探针组中,在0.001错误接受率下,六种算法的建模平均误差为6.3%,是所有FERET实验中最多的。建立的子空间近似不仅与原始方法的识别率匹配,而且还可以很好地建模局部流形结构(通过最近邻的身份相似性来衡量)。我们平均发现本地社区的相似度为87%。我们还证明了线性模型对于人脸数据库的算法-de-n-nndent索引的有用性,发现对于贝叶斯,弹性束图匹配和一种专有算法,它导致人脸比较减少了20倍以上。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号