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Contribution Details

Type Journal Article
Scope Discipline-based scholarship
Title Open-set face recognition with maximal entropy and Objectosphere loss
Organization Unit
Authors
  • Rafael Henrique Vareto
  • Yu Linghu
  • Terrance Edward Boult
  • William Robson Schwartz
  • Manuel Günther
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
Journal Title Image and Vision Computing
Publisher Elsevier
Geographical Reach international
ISSN 0262-8856
Volume 141
Page Range 104862
Date 2024
Abstract Text Open-set face recognition characterizes a scenario where unknown individuals, unseen during the training and enrollment stages, appear on operation time. This work concentrates on watchlists, an open-set task that is expected to operate at a low false-positive identification rate and generally includes only a few enrollment samples per identity. We introduce a compact adapter network that benefits from additional negative face images when combined with distinct cost functions, such as Objectosphere Loss (OS) and the proposed Maximal Entropy Loss (MEL). MEL modifies the traditional Cross-Entropy loss in favor of increasing the entropy for negative samples and attaches a penalty to known target classes in pursuance of gallery specialization. The proposed approach adopts pre-trained deep neural networks (DNNs) for face recognition as feature extractors. Then, the adapter network takes deep feature representations and acts as a substitute for the output layer of the pre-trained DNN in exchange for an agile domain adaptation. Promising results have been achieved following open-set protocols for three different datasets: LFW, IJB-C, and UCCS as well as state-of-the-art performance when supplementary negative data is properly selected to fine-tune the adapter network.
Digital Object Identifier 10.1016/j.imavis.2023.104862
Other Identification Number merlin-id:24395
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Keywords Computer Vision and Pattern Recognition, Signal Processing