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Decision making in the LDA space: generalised gradient direction metric

机译:LDA空间中的决策:广义梯度方向度量

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We consider the problem of face authentication in the linear discriminant analysis (LDA) space and investigate the effect of different scoring functions on the performance of the authentication system. First the theory of optimal metric for measuring the similarity between a pair of face images presented in J. Kittler et al. (2000) is extended to cope with general class specific covariance structures. The resulting gradient metric is experimentally compared with the commonly used normalised correlation and the original gradient metric. The merit of global and client specific thresholding is also investigated. The study is performed on the BANCA database [E. Bailly-Bailliere et al., 2003] using internationally agreed experimental protocols. The results suggest that the novel metric is superior in scenarios where the quality of input face data is comparable to the quality of data used for determining the LDA space. In other cases, the weaker model deploying the isotropic covariance matrix in working out the gradient direction is preferable.
机译:我们考虑了线性判别分析(LDA)空间中的人脸身份验证问题,并研究了不同评分功能对身份验证系统性能的影响。首先,J。Kittler等人提出的用于测量一对面部图像之间相似度的最佳度量理论。 (2000年)扩展到应付一般类特定的协方差结构。将所得的梯度度量与常用的归一化相关性和原始梯度度量进行实验比较。还研究了全局阈值和特定于客户的阈值的优点。该研究是在BANCA数据库上进行的[E. Bailly-Bailliere et al。,2003]使用国际认可的实验方案。结果表明,在输入面部数据的质量可与用于确定LDA空间的数据质量相媲美的情况下,该新颖的度量标准更为优越。在其他情况下,最好采用较弱的模型来部署各向同性协方差矩阵,以求出梯度方向。

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