Learning to Cluster Faces on an Affinity Graph
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Face Clustering | MS1M 1.74M unlabeled (test) | FP Rate82.41 | 20 | |
| Face Clustering | MS1M 2.89M unlabeled (test) | FP80.32 | 20 | |
| Face Clustering | MS1M 4.05M unlabeled (test) | FP Rate78.98 | 20 | |
| Face Clustering | MS1M 5.21M unlabeled (test) | FP Rate77.87 | 20 | |
| Face Clustering | MS1M 584K unlabeled (test) | FP85.66 | 20 |