论文标题
簇面:基于设置的面部识别的关节聚类和分类
ClusterFace: Joint Clustering and Classification for Set-Based Face Recognition
论文作者
论文摘要
高质量的图像可用时,深度学习技术已使复杂的面部特征成功建模。尽管如此,在现实世界中或在不利条件下的现实世界情景中,对人面孔的准确建模和认可仍然是一个开放的问题。当不受约束的面部被映射到深度特征时,诸如照明,姿势,遮挡等的变化会在所得的特征空间中造成不一致之处。因此,基于直接关联的结论得出的结论可能会导致性能降低。这提高了对面部识别之前基本特征空间分析的要求。本文设计了一种联合聚类和分类方案,该方案以易于恐惧的方式学习了深层的关联。我们的方法基于层次聚类,即早期迭代倾向于保持高可靠性。我们方法的理由是,可靠的聚类结果可以提供有关特征空间分布的见解,可以指导随后的分类。在所有三个实验上,对三个任务,面部验证,面部识别和排名级搜索的实验评估表现出更好或竞争性的表现。
Deep learning technology has enabled successful modeling of complex facial features when high quality images are available. Nonetheless, accurate modeling and recognition of human faces in real world scenarios `on the wild' or under adverse conditions remains an open problem. When unconstrained faces are mapped into deep features, variations such as illumination, pose, occlusion, etc., can create inconsistencies in the resultant feature space. Hence, deriving conclusions based on direct associations could lead to degraded performance. This rises the requirement for a basic feature space analysis prior to face recognition. This paper devises a joint clustering and classification scheme which learns deep face associations in an easy-to-hard way. Our method is based on hierarchical clustering where the early iterations tend to preserve high reliability. The rationale of our method is that a reliable clustering result can provide insights on the distribution of the feature space, that can guide the classification that follows. Experimental evaluations on three tasks, face verification, face identification and rank-order search, demonstrates better or competitive performance compared to the state-of-the-art, on all three experiments.