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      SCIE SCOPUS KCI등재

      Boosting the Face Recognition Performance of Ensemble Based LDA for Pose, Non-uniform Illuminations, and Low-Resolution Images = Boosting the Face Recognition Performance of Ensemble Based LDA for Pose, Non-uniform Illuminations, and Low-Resolution Images

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      https://www.riss.kr/link?id=A106294654

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      다국어 초록 (Multilingual Abstract)

      Face recognition systems have several potential applications, such as security and biometric access control. Ongoing research is focused to develop a robust face recognition algorithm that can mimic the human vision system. Face pose, non-uniform illuminations, and low-resolution are main factors that influence the performance of face recognition algorithms. This paper proposes a novel method to handle the aforementioned aspects. Proposed face recognition algorithm initially uses 68 points to locate a face in the input image and later partially uses the PCA to extract mean image. Meanwhile, the AdaBoost and the LDA are used to extract face features. In final stage, classic nearest centre classifier is used for face classification. Proposed method outperforms recent state-of-the-art face recognition algorithms by producing high recognition rate and yields much lower error rate for a very challenging situation, such as when only frontal (0<sup>0</sup>) face sample is available in gallery and seven poses (0<sup>0</sup>, ±30<sup>0</sup>, ±35<sup>0</sup>, and ±45<sup>0</sup>) as a probe on the LFW and the CMU Multi-PIE databases.
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      Face recognition systems have several potential applications, such as security and biometric access control. Ongoing research is focused to develop a robust face recognition algorithm that can mimic the human vision system. Face pose, non-uniform illu...

      Face recognition systems have several potential applications, such as security and biometric access control. Ongoing research is focused to develop a robust face recognition algorithm that can mimic the human vision system. Face pose, non-uniform illuminations, and low-resolution are main factors that influence the performance of face recognition algorithms. This paper proposes a novel method to handle the aforementioned aspects. Proposed face recognition algorithm initially uses 68 points to locate a face in the input image and later partially uses the PCA to extract mean image. Meanwhile, the AdaBoost and the LDA are used to extract face features. In final stage, classic nearest centre classifier is used for face classification. Proposed method outperforms recent state-of-the-art face recognition algorithms by producing high recognition rate and yields much lower error rate for a very challenging situation, such as when only frontal (0<sup>0</sup>) face sample is available in gallery and seven poses (0<sup>0</sup>, ±30<sup>0</sup>, ±35<sup>0</sup>, and ±45<sup>0</sup>) as a probe on the LFW and the CMU Multi-PIE databases.

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      참고문헌 (Reference)

      1 S. Kakarwal, "Wavelet transform based feature extraction for face recognition" (1) : 9740767-, 2010

      2 Z. Mahmood, "Visual enhancement of human observatory system using multi-scale retinex" 13 : 2018

      3 J. Zhao, "Unconstrained face recognition using a set-to-set distance measure on deep learned features" 28 (28): 2679-2689, 2018

      4 L.M. Dang, "UAV based wilt detection system via convolutional neural networks" 2018

      5 M. Wan, "Two-dimensional Discriminant Locality Preserving Projections(2DDLPP)and Its Application to Feature Extraction via Fuzzy Set" 76 (76): 355-371, 2017

      6 Z. Mahmood, "Towards a fully automated car parking system" 13 (13): 293-, 2019

      7 M. Alam, "Sparse simultaneous recurrent deep learning for robust facial expression recognition" 29 (29): 4905-4916, 2018

      8 S Tan, "Robust face recognition with kernelized locality-sensitive group sparsity representation" 26 (26): 4661-4668, 2017

      9 C. Ding, "Robust face recognition via multimodal deep face representation" 17 (17): 2049-2058, 2015

      10 Y. Su, "Robust Video Face Recognition Under Pose Variation" 1-15, 2017

      1 S. Kakarwal, "Wavelet transform based feature extraction for face recognition" (1) : 9740767-, 2010

      2 Z. Mahmood, "Visual enhancement of human observatory system using multi-scale retinex" 13 : 2018

      3 J. Zhao, "Unconstrained face recognition using a set-to-set distance measure on deep learned features" 28 (28): 2679-2689, 2018

      4 L.M. Dang, "UAV based wilt detection system via convolutional neural networks" 2018

      5 M. Wan, "Two-dimensional Discriminant Locality Preserving Projections(2DDLPP)and Its Application to Feature Extraction via Fuzzy Set" 76 (76): 355-371, 2017

      6 Z. Mahmood, "Towards a fully automated car parking system" 13 (13): 293-, 2019

      7 M. Alam, "Sparse simultaneous recurrent deep learning for robust facial expression recognition" 29 (29): 4905-4916, 2018

      8 S Tan, "Robust face recognition with kernelized locality-sensitive group sparsity representation" 26 (26): 4661-4668, 2017

      9 C. Ding, "Robust face recognition via multimodal deep face representation" 17 (17): 2049-2058, 2015

      10 Y. Su, "Robust Video Face Recognition Under Pose Variation" 1-15, 2017

      11 J. Lu, "Reconstruction-based metric learning for unconstrained face verification" 10 (10): 79-89, 2015

      12 G. I. Davida, "On enabling secure applications through off-line biometric identification" 1998

      13 N. Hezil, "Multimodal biometric recognition using human ear and palmprint" 6 (6): 351-359, 2017

      14 Gross, R., "Multi-pie" 28 (28): 807-813, 2010

      15 M. Wan, "Local graph embedding based on maximum margin criterion via fuzzy set" 318 : 120-131, 2017

      16 O. Aldrian, "Inverse rendering of faces with a 3D morphable model" 35 (35): 1080-1093, 2013

      17 R. Ranjan, "Hyperface: A deep multi-task learning framework for face detection, landmark localization, pose estimation, and gender recognition" 41 (41): 121-135, 2019

      18 S. Munasinghe, "Human-level face verification with intra-personal factor analysis and deep face representation" 7 (7): 467-473, 2018

      19 C. Galea, "Forensic face photo-sketch recognition using a deep learning-based architecture" 24 (24): 1586-1590, 2017

      20 K. Simonyan, "Fisher Vector Faces in the Wild" 2 (2): 8.1-8.12, 2013

      21 M. Wan, "Feature extraction using two-dimensional maximum embedding difference" 274 : 55-69, 2014

      22 F. Schroff, "Facenet : A unified embedding for face recognition and clustering" 815-823, 2015

      23 S. U. Rehman, "Face recognition: A novel un-supervised convolutional neural network method" 139-144, 2016

      24 M. J. Er, "Face recognition with radial basis function(RBF)neural networks" 13 (13): 697-710, 2002

      25 J. Lu, "Face recognition using LDA-based algorithms" 14 (14): 195-200, 2003

      26 S. A. Nazeer, "Face Recognition System using Artificial Neural Networks Approach" 420-425, 2007

      27 T. Ahonen, "Face Description with Local Binary Patterns : Application to Face Recognition" 28 (28): 2037-2041, 2006

      28 J. Lu, "Ensemblebased discriminant learning with boosting for face recognition" 17 (17): 166-178, 2006

      29 M. Turk, "Eigenfaces for Recognition" 3 (3): 71-86, 1991

      30 Z. Mahmood, "Effects of pose and image resolution on automatic face recognition" 5 (5): 111-119, 2016

      31 Zahid Mahmood, "EAR: Enhanced Augmented Reality System for Sports Entertainment Applications" 한국인터넷정보학회 11 (11): 6069-6091, 2017

      32 J. Lu, "Discriminative deep metric learning for face and kinship verification" 26 (26): 4269-4282, 2017

      33 Y. Taigman, "DeepFace : Closing the gap to human-level performance in face verification" 1701-1708, 2014

      34 D.L. Minh, "Deep learning approach for short-term stock trends prediction based on two-stream gated recurrent unit network" 6 : 55392-55404, 2018

      35 Z. Mahmood, "Automatic player detection and recognition in images using AdaBoost" IEEE 64-69, 2012

      36 Z. Mahmood, "Automatic player detection and identification for sports entertainment applications" 18 (18): 971-982, 2015

      37 L. Lu, "Audio restoration by constrained audio texture synthesis" 3 : 405-408, 2003

      38 E. Learned-Miller, "Advances in face detection and facial image analysis" Springer 189-248, 2016

      39 Z. Mahmood, "A review on state-of-the-art face recognition approaches" 25 (25): 1750025-, 2017

      40 Y Wen, "A discriminative feature learning approach for deep face recognition" 499-515, 2016

      41 H. Han, "A comparative study on illumination preprocessing in face recognition" 46 (46): 1691-1699, 2013

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      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      학술지등록 한글명 : KSII Transactions on Internet and Information Systems
      외국어명 : KSII Transactions on Internet and Information Systems
      2023 평가예정 해외DB학술지평가 신청대상 (해외등재 학술지 평가)
      2020-01-01 평가 등재학술지 유지 (해외등재 학술지 평가) KCI등재
      2013-10-01 평가 등재학술지 선정 (기타) KCI등재
      2011-01-01 평가 등재후보학술지 유지 (기타) KCI등재후보
      2009-01-01 평가 SCOPUS 등재 (신규평가) KCI등재후보
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      학술지 인용정보

      학술지 인용정보
      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.45 0.21 0.37
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.32 0.29 0.244 0.03
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