Kinship recognition aims to determine whether the subjects in two facial images are kin or non-kin, which is an emerging and challenging problem. However, most previous methods focus on heuristic designs without considering the spatial correlation between face images. In this paper, we aim to learn discriminative kinship representations embedded with the relation information between face components (e.g., eyes, nose, etc.). To achieve this goal, we propose the Face Componential Relation Network, which learns the relationship between face components among images with a cross-attention mechanism, which automatically learns the important facial regions for kinship recognition. Moreover, we propose Face Componential Relation Network (FaCoRNet), which adapts the loss function by the guidance from cross-attention to learn more discriminative feature representations. The proposed \MainMethodAbbr~outperforms previous state-of-the-art methods by large margins for the largest public kinship recognition FIW benchmark. The code will be publicly released upon acceptance.
翻译:亲缘关系识别旨在确定两个面部图像中的主体是亲戚还是非亲戚,这是一个新兴和具有挑战性的问题。然而,大多数以前的方法都集中于启发式设计,没有考虑面部图像之间的空间相关性。在本文中,我们旨在学习嵌入面部组件(例如眼睛、鼻子等)之间关系信息的判别亲缘关系表示。为了实现这一目标,我们提出了面部组件关系网络,它通过交叉注意机制学习图像之间面部组件之间的关系,自动学习亲缘关系识别的重要面部区域。此外,我们提出面部组件关系网络(FaCoRNet),它通过交叉注意的引导调整损失函数,以学习更具判别性的特征表示。所提出的主方法缩写在最大的公共亲缘关系FIW基准测试中超过以前最先进的方法很大程度上。代码将在接受后公开发布。