Face recognition through mismatch driven representations of the face

S. Lucey, Tsuhan Chen
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引用次数: 9

Abstract

Performance of face verification systems can be adversely affected by a number of different mismatches (e.g. illumination, expression, alignment, etc.) between gallery and probe images. In this paper, we demonstrate that representations of the face used during the verification process should be driven by their sensitivity to these mismatches. Two representation categories of the face are proposed, parts and reflectance, each motivated by their own properties of invariance and sensitivity to different types of mismatches (i.e. spatial and spectral). We additionally demonstrate that the employment of the sum rule gives approximately equivalent performance to more exotic combination strategies based on support vector machine (SVM) classifiers, without the need for training on a tuning set. Improved performance is demonstrated, with a reduction in false reject rate of over 30% when compared to the single representation algorithm. Experiments were conducted on a subset of the challenging face recognition grand challenge (FRGC) v1.0 dataset.
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通过不匹配驱动的面部表征进行人脸识别
人脸验证系统的性能可能会受到画廊和探针图像之间许多不同的不匹配(例如照明,表情,对齐等)的不利影响。在本文中,我们证明了在验证过程中使用的人脸表征应该由它们对这些不匹配的敏感性驱动。提出了人脸的两种表示类型:部分和反射率,每一种都有其自身的不变性和对不同类型的不匹配(即空间和光谱)的敏感性。此外,我们还证明,使用和规则与基于支持向量机(SVM)分类器的更奇特的组合策略具有近似等效的性能,而无需在调优集上进行训练。改进的性能被证明,与单一表示算法相比,错误拒绝率降低了30%以上。在挑战性人脸识别大挑战(FRGC) v1.0数据集的一个子集上进行了实验。
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