AggNet: Learning to Aggregate Faces for Group Membership Verification
- URL: http://arxiv.org/abs/2206.08683v1
- Date: Fri, 17 Jun 2022 10:48:34 GMT
- Title: AggNet: Learning to Aggregate Faces for Group Membership Verification
- Authors: Marzieh Gheisari, Javad Amirian, Teddy Furon, Laurent Amsaleg
- Abstract summary: In some face recognition applications, we are interested to verify whether an individual is a member of a group, without revealing their identity.
Some existing methods, propose a mechanism for quantizing precomputed face descriptors into discrete embeddings and aggregating them into one group representation.
We propose a deep architecture that jointly learns face descriptors and the aggregation mechanism for better end-to-end performances.
- Score: 20.15673797674449
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In some face recognition applications, we are interested to verify whether an
individual is a member of a group, without revealing their identity. Some
existing methods, propose a mechanism for quantizing precomputed face
descriptors into discrete embeddings and aggregating them into one group
representation. However, this mechanism is only optimized for a given closed
set of individuals and needs to learn the group representations from scratch
every time the groups are changed. In this paper, we propose a deep
architecture that jointly learns face descriptors and the aggregation mechanism
for better end-to-end performances. The system can be applied to new groups
with individuals never seen before and the scheme easily manages new
memberships or membership endings. We show through experiments on multiple
large-scale wild-face datasets, that the proposed method leads to higher
verification performance compared to other baselines.
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