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Open-set face recognition across look-alike faces in real-world scenarios

Published: 01 January 2017 Publication History

Abstract

The open-set problem is among the problems that have significantly changed the performance of face recognition algorithms in real-world scenarios. Open-set operates under the supposition that not all the probes have a pair in the gallery. Most face recognition systems in real-world scenarios focus on handling pose, expression and illumination problems on face recognition. In addition to these challenges, when the number of subjects is increased for face recognition, these problems are intensified by look-alike faces for which there are two subjects with lower intra-class variations. In such challenges, the inter-class similarity is higher than the intra-class variation for these two subjects. In fact, these look-alike faces can be created as intrinsic, situation-based and also by facial plastic surgery. This work introduces three real-world open-set face recognition methods across facial plastic surgery changes and a look-alike face by 3D face reconstruction and sparse representation. Since some real-world databases for face recognition do not have multiple images per person in the gallery, with just one image per subject in the gallery, this paper proposes a novel idea to overcome this challenge by 3D modeling from gallery images and synthesizing them for generating several images. Accordingly, a 3D model is initially reconstructed from frontal face images in a real-world gallery. Then, each 3D reconstructed face in the gallery is synthesized to several possible views and a sparse dictionary is generated based on the synthesized face image for each person. Also, a likeness dictionary is defined and its optimization problem is solved by the proposed method. Finally, the face recognition is performed for open-set face recognition using three proposed representation classifications. Promising results are achieved for face recognition across plastic surgery and look-alike faces on three databases including the plastic surgery face, look-alike face and LFW databases compared to several state-of-the-art methods. Also, several real-world and open-set scenarios are performed to evaluate the proposed method on these databases in real-world scenarios. This paper uses 3D reconstructed models to recognize look-alike faces.A feature is extracted from both facial reconstructed depth and texture images.This paper proposes likeness dictionary learning.Three open-set classification methods are proposed for real-world face recognition.

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      Published In

      cover image Image and Vision Computing
      Image and Vision Computing  Volume 57, Issue C
      January 2017
      157 pages

      Publisher

      Butterworth-Heinemann

      United States

      Publication History

      Published: 01 January 2017

      Author Tags

      1. Collaborative representation
      2. Facial plastic surgery
      3. Look-alike face
      4. Open-set face recognition
      5. Real-world scenarios
      6. Sparse representation

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      • (2022)Facial image recognition for biometric authentication systems using a combination of geometrical feature points and low-level visual featuresJournal of King Saud University - Computer and Information Sciences10.1016/j.jksuci.2020.11.02834:7(4109-4121)Online publication date: 1-Jul-2022
      • (2022)Multi-label out-of-distribution detection via exploiting sparsity and co-occurrence of labelsImage and Vision Computing10.1016/j.imavis.2022.104548126:COnline publication date: 1-Oct-2022
      • (2018)Research on Face Recognition Based on the Fusion of Convolution and Wavelet Neural NetworkProceedings of the 4th International Conference on Virtual Reality10.1145/3198910.3234658(122-125)Online publication date: 24-Feb-2018
      • (2018)A Novel Face Liveness Detection Algorithm with Multiple Liveness IndicatorsWireless Personal Communications: An International Journal10.1007/s11277-018-5661-1100:4(1677-1687)Online publication date: 1-Jun-2018
      • (2017)Facial expression recognition using dual dictionary learningJournal of Visual Communication and Image Representation10.1016/j.jvcir.2017.02.00745:C(20-33)Online publication date: 1-May-2017

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