Yan Shuicheng, Xu Dong, Tang Xiaoou
Microsoft Research Asia, Beijing 100080, China.
IEEE Trans Image Process. 2007 Jan;16(1):262-8. doi: 10.1109/tip.2006.884939.
The process of face verification is guided by a pre-learned global threshold, which, however, is often inconsistent with class-specific optimal thresholds. It is, hence, beneficial to pursue a balance of the class-specific thresholds in the model-learning stage. In this paper, we present a new dimensionality reduction algorithm tailored to the verification task that ensures threshold balance. This is achieved by the following aspects. First, feasibility is guaranteed by employing an affine transformation matrix, instead of the conventional projection matrix, for dimensionality reduction, and, hence, we call the proposed algorithm threshold balanced transformation (TBT). Then, the affine transformation matrix, constrained as the product of an orthogonal matrix and a diagonal matrix, is optimized to improve the threshold balance and classification capability in an iterative manner. Unlike most algorithms for face verification which are directly transplanted from face identification literature, TBT is specifically designed for face verification and clarifies the intrinsic distinction between these two tasks. Experiments on three benchmark face databases demonstrate that TBT significantly outperforms the state-of-the-art subspace techniques for face verification.
面部验证过程由预先学习的全局阈值引导,然而,该全局阈值通常与特定类别的最优阈值不一致。因此,在模型学习阶段平衡特定类别的阈值是有益的。在本文中,我们提出了一种专门针对验证任务量身定制的新降维算法,该算法可确保阈值平衡。这通过以下几个方面实现。首先,通过采用仿射变换矩阵而非传统投影矩阵进行降维来保证可行性,因此,我们将所提出的算法称为阈值平衡变换(TBT)。然后,受限于正交矩阵与对角矩阵乘积的仿射变换矩阵以迭代方式进行优化,以提高阈值平衡和分类能力。与大多数直接从人脸识别文献移植而来的面部验证算法不同,TBT是专门为面部验证设计的,并阐明了这两项任务之间的内在区别。在三个基准面部数据库上进行的实验表明,TBT在面部验证方面显著优于当前最先进的子空间技术。