Robust periocular recognition in training of CNN models using HOG- based gradient approach

https://doi.org/10.53730/ijhs.v6nS6.11833

Authors

  • Sivaprasad V. Professor, Department of CSE, Sree Vidyanikethan Engineering College,Tirupati
  • Kannan K. Assistant Professor,Department of CSE,Sree Vidyanikethan Engineering College,Tirupati
  • M. P. Rajakumar Professor, Department of CSE, St.Joseph’s College of Engineering, Chennai
  • K. Sivaperumal Assistant Professor, Department of Commerce, Faculty of Science and Humanities, SRM Institute of Science and Technology, Kattankulathur
  • R. Thiagarajan Associate Professor, Department of IT, Prathyusha Engineering College, Chennai
  • T. Manikandan Professor, Department of Electronics and Communication Engineering, Rajalakshmi Engineering College, Chennai

Keywords:

robust periocular, training, CNN models, gradient approach

Abstract

Automated human recognition is a difficult challenge in using incomplete faces in bio-metric computer vision. As a result, periocular detection aims to discover humans by utilizing characteristics derived from the area around the eye. The region bounded by the half of the nasal region, jawline, and apex of the brow is used for periocular identification. As seen, the periocular facial structure comprises eye edges, eyebrows, eye foldings, and texture. Addressing variability in dynamic periocular identification is required due to differences in light, topic distances, sensor variances, and indoor-outdoor variations. To address this research difficulty, a HOG-based gradient approach for training deep CNN models is presented, which aids in the creation of domain invariant embedding space.

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Published

18-08-2022

How to Cite

Sivaprasad, V., Kannan, K., Rajakumar, M. P., Sivaperumal, K., Thiagarajan, R., & Manikandan, T. (2022). Robust periocular recognition in training of CNN models using HOG- based gradient approach. International Journal of Health Sciences, 6(S6), 8506–8512. https://doi.org/10.53730/ijhs.v6nS6.11833

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