Face clustering has attracted rising research interest recently to take advantage of massive amounts of face images on the web. State-of-the-art performance has been achieved by Graph Convolutional Networks (GCN) due to their powerful representation capacity. However, existing GCN-based methods build face graphs mainly according to kNN relations in the feature space, which may lead to a lot of noise edges connecting two faces of different classes. The face features will be polluted when messages pass along these noise edges, thus degrading the performance of GCNs. In this paper, a novel algorithm named Ada-NETS is proposed to cluster faces by constructing clean graphs for GCNs. In Ada-NETS, each face is transformed to a new structure space, obtaining robust features by considering face features of the neighbour images. Then, an adaptive neighbour discovery strategy is proposed to determine a proper number of edges connecting to each face image. It significantly reduces the noise edges while maintaining the good ones to build a graph with clean yet rich edges for GCNs to cluster faces. Experiments on multiple public clustering datasets show that Ada-NETS significantly outperforms current state-of-the-art methods, proving its superiority and generalization.
翻译:面部群集最近吸引了越来越多的研究兴趣,以利用网络上大量面部图像; 图表革命网络(GCN)由于其强大的代表能力,实现了最先进的性能; 然而,现有的GCN方法主要根据地貌空间中的 kNN 关系构建面貌图,这可能导致许多噪音边缘,连接不同类别的两个面孔; 当信息沿着这些噪音边缘传递时,面部特征将受到污染,从而降低GCN的性能。 本文中, 提出了一个名为Ada- NETS 的新型算法, 通过为GCN 建立干净的图表, 向群集面推荐了名为Ada- NETS 的新型算法。 在Ada- NETS 中, 每一个面部都转换成一个新的结构空间, 通过考虑邻居图像的面貌特征获得强大的特征。 然后, 提出一个适应性邻居发现战略, 确定连接每个面部图像的边缘的适当数量。 它会大大降低噪音边缘,同时保持良好的边端, 为GCN 到群面建立干净但丰富的边的图。 在多个公共群集数据集上进行的实验显示Ada- NES 显著的优势, 展示了它的优势, 和当前状态的优势。