Recognizing Very Small Face Images Using Convolution Neural Networks

Authors

  • P. Archana1
  • Eticala Neha Reddy
  • Meesala Bhavya
  • Yalka Sharan
  • Shashank

DOI:

https://doi.org/10.53555/sfs.v10i1.1223

Keywords:

Deep convolution neural networks (DCNNs), Georgia Tech face database (GT), Labelled Faces in the Wild (LFW)

Abstract

Face recognition can be installed in a surveillance system so that it can be used for monitoring, tracking and access control. An excellent, intelligent surveillance system should be sensitive to the objects far away from the camera. Unfortunately, due to the long-distance, objects like human faces captured by the camera are too small to identify. As to enhance the subtle color differences in the face image, in this paper we first improve the resolution of the captured image using deep convolution neural networks (DCNNs). Then the efficient features are extracted and used to do classification. As for verifying the effectiveness of the proposed method, we used three databases including AR face database, Georgia Tech face database (GT) database, and Labelled Faces in the Wild (LFW) database, altogether, to conduct the training and testing. Compared to the existing approaches, experimental results show that the identification accuracy of the proposed method outperforms any existing approaches

Author Biographies

  • P. Archana1

    Assistant Professor, Dept of CSE, Sreyas Institute of Engineering and Technology

  • Eticala Neha Reddy

    Ug scholar, Dept of CSE, Sreyas Institute of Engineering and Technology

  • Meesala Bhavya

    Ug scholar, Dept of CSE, Sreyas Institute of Engineering and Technology

  • Yalka Sharan

    Ug scholar, Dept of CSE, Sreyas Institute of Engineering and Technology

  • Shashank

    Ug scholar, Dept of CSE, Sreyas Institute of Engineering and Technology

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Published

2023-06-28

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Section

Articles