In this paper, we investigate the problem of facial kinship verification by learning hierarchical reasoning graph networks. Conventional methods usually focus on learning discriminative features for each facial image of a paired sample and neglect how to fuse the obtained two facial image features and reason about the relations between them. To address this, we propose a Star-shaped Reasoning Graph Network (S-RGN). Our S-RGN first constructs a star-shaped graph where each surrounding node encodes the information of comparisons in a feature dimension and the central node is employed as the bridge for the interaction of surrounding nodes. Then we perform relational reasoning on this star graph with iterative message passing. The proposed S-RGN uses only one central node to analyze and process information from all surrounding nodes, which limits its reasoning capacity. We further develop a Hierarchical Reasoning Graph Network (H-RGN) to exploit more powerful and flexible capacity. More specifically, our H-RGN introduces a set of latent reasoning nodes and constructs a hierarchical graph with them. Then bottom-up comparative information abstraction and top-down comprehensive signal propagation are iteratively performed on the hierarchical graph to update the node features. Extensive experimental results on four widely used kinship databases show that the proposed methods achieve very competitive results.
翻译:在本文中,我们通过学习分级推理图网络来调查面部亲属的核实问题。常规方法通常侧重于为配对样本的每个面部图像学习区别性特征,忽视如何结合获得的两种面部图像特征和它们之间关系的理由。为了解决这个问题,我们提议建立一个星形理性图图网络(S-RGN)。我们的S-RGN首先建立一个恒星形状图,其中每个周围节点都将特征层面和中央节点的比较信息编码成一个特点,作为周围节点相互作用的桥梁。然后我们用反复传递的信息传递星形图的关联性推理。提议的S-RGN只使用一个中心节点来分析和处理来自周围所有节点的信息,这限制了其推理能力。我们进一步开发一个高度理性图网络(H-RGN),以便利用更强大和灵活的能力。更具体地说,我们的H-RGN引入一套潜在推理节点,并与它们一起构建一个等级图。然后,从下往上比较信息抽象和从上向下全面传递信号。在等级图上反复进行分析和处理,从而更新了四类系式的实验结果。