Selected article for: "accuracy high and loss function"

Author: Boutros, Fadi; Damer, Naser; Kirchbuchner, Florian; Kuijper, Arjan
Title: Unmasking Face Embeddings by Self-restrained Triplet Loss for Accurate Masked Face Recognition
  • Cord-id: av8zuxa6
  • Document date: 2021_3_2
  • ID: av8zuxa6
    Snippet: Using the face as a biometric identity trait is motivated by the contactless nature of the capture process and the high accuracy of the recognition algorithms. After the current COVID-19 pandemic, wearing a face mask has been imposed in public places to keep the pandemic under control. However, face occlusion due to wearing a mask presents an emerging challenge for face recognition systems. In this paper, we present a solution to improve the masked face recognition performance. Specifically, we
    Document: Using the face as a biometric identity trait is motivated by the contactless nature of the capture process and the high accuracy of the recognition algorithms. After the current COVID-19 pandemic, wearing a face mask has been imposed in public places to keep the pandemic under control. However, face occlusion due to wearing a mask presents an emerging challenge for face recognition systems. In this paper, we present a solution to improve the masked face recognition performance. Specifically, we propose the Embedding Unmasking Model (EUM) operated on top of existing face recognition models. We also propose a novel loss function, the Self-restrained Triplet (SRT), which enabled the EUM to produce embeddings similar to these of unmasked faces of the same identities. The achieved evaluation results on three face recognition models, two real masked datasets, and two synthetically generated masked face datasets proved that our proposed approach significantly improves the performance in most experimental settings.

    Search related documents:
    Co phrase search for related documents
    • accurate algorithm and achieve result: 1
    • achieve accuracy and acquisition system: 1