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Learning to Cluster Faces on an Affinity Graph

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Face recognition sees remarkable progress in recent years, and its performance has reached a very high level. Taking it to a next level requires substantially larger data, which would involve prohibitive annotation cost. Hence, exploiting unlabeled data becomes an appealing alternative. Recent works have shown that clustering unlabeled faces is a promising approach, often leading to notable performance gains. Yet, how to effectively cluster, especially on a large-scale (i.e. million-level or above) dataset, remains an open question. A key challenge lies in the complex variations of cluster patterns, which make it difficult for conventional clustering methods to meet the needed accuracy. This work explores a novel approach, namely, learning to cluster instead of relying on hand-crafted criteria. Specifically, we propose a framework based on graph convolutional network, which combines a detection and a segmentation module to pinpoint face clusters. Experiments show that our method yields significantly more accurate face clusters, which, as a result, also lead to further performance gain in face recognition.

Lei Yang, Xiaohang Zhan, Dapeng Chen, Junjie Yan, Chen Change Loy, Dahua Lin• 2019

Related benchmarks

TaskDatasetResultRank
Face ClusteringMS1M 1.74M unlabeled (test)
FP Rate82.41
20
Face ClusteringMS1M 2.89M unlabeled (test)
FP80.32
20
Face ClusteringMS1M 4.05M unlabeled (test)
FP Rate78.98
20
Face ClusteringMS1M 5.21M unlabeled (test)
FP Rate77.87
20
Face ClusteringMS1M 584K unlabeled (test)
FP85.66
20
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