As of August 2024, International Journal "Notes on Intuitionistic Fuzzy Sets" is being indexed in Scopus.
Please check our Instructions to Authors and send your manuscripts to nifs.journal@gmail.com. Next issue: September/October 2024.

Open Call for Papers: International Workshop on Intuitionistic Fuzzy Sets • 13 December 2024 • Banska Bystrica, Slovakia/ online (hybrid mode).
Deadline for submissions: 16 November 2024.

Issue:An intuitionistic fuzzy facial recognition approach by eigenvalues: Difference between revisions

From Ifigenia, the wiki for intuitionistic fuzzy sets and generalized nets
Jump to navigation Jump to search
Created page with "{{PAGENAME}} {{PAGENAME}} {{PAGENAME}}..."
 
m Text replacement - ""Notes on IFS", Volume" to ""Notes on Intuitionistic Fuzzy Sets", Volume"
 
(One intermediate revision by one other user not shown)
Line 38: Line 38:
{{issue/data
{{issue/data
  | conference      = 21st International Conference on Intuitionistic Fuzzy Sets, 22–23 May 2017, Burgas, Bulgaria
  | conference      = 21st International Conference on Intuitionistic Fuzzy Sets, 22–23 May 2017, Burgas, Bulgaria
  | issue          = [[Notes on Intuitionistic Fuzzy Sets/23/2|"Notes on IFS", Volume 23, 2017, Number 2]], pages 111—118
  | issue          = [[Notes on Intuitionistic Fuzzy Sets/23/2|"Notes on Intuitionistic Fuzzy Sets", Volume 23, 2017, Number 2]], pages 111—118
  | file            = NIFS-23-2-111-118.pdf
  | file            = NIFS-23-2-111-118.pdf
  | format          = PDF
  | format          = PDF
  | size            = 157 Kb
  | size            = 157 Kb
  | abstract        = In the present paper a facial recognition approach using a reduced set of image values as a training vector is presented. The image simplification is performed by using the calculated Eigenvector of an image to train a neural network. It results lower processing times for rough
  | abstract        = In the present paper a facial recognition approach using a reduced set of image values as a training vector is presented. The image simplification is performed by using the calculated Eigenvector of an image to train a neural network. It results lower processing times for rough image recognition. This approach is ideal for rough facial acquisition in dynamic background where it can be used as an early detection system. The degree of coincidence is stated by an intuitionistic fuzzy estimation. To verify the approach correctness an experiment involving variety of tests over human and non-human on objects of is carried out.
image recognition. This approach is ideal for rough facial acquisition in dynamic background where it can be used as an early detection system. The degree of coincidence is stated by an intuitionistic fuzzy estimation. To verify the approach correctness an experiment involving variety of tests over human and non-human on objects of is carried out.
  | keywords        = Intuitionistic fuzzy sets, Facial recognition, Image recognition, Eigenvalues, Neural networks.
  | keywords        = Intuitionistic fuzzy sets, Facial recognition, Image recognition, Eigenvalues, Neural networks.
  | ams            = 03E72.
  | ams            = 03E72.

Latest revision as of 17:20, 28 August 2024

shortcut
http://ifigenia.org/wiki/issue:nifs/23/2/111-118
Title of paper: An intuitionistic fuzzy facial recognition approach by eigenvalues
Author(s):
Todor Petkov
Laboratory of Intelligent Systems, University “Prof. Dr. Assen Zlatarov”, 1 Prof. Asen Zlatarov University, Bourgas-8010, Bulgaria
todor_petkov@btu.bg
Todor Kostadinov
Laboratory of Intelligent Systems, University “Prof. Dr. Assen Zlatarov”, 1 Prof. Asen Zlatarov University, Bourgas-8010, Bulgaria
kostadinov.todor@btu.bg
Sotir Sotirov
Laboratory of Intelligent Systems, University “Prof. Dr. Assen Zlatarov”, 1 Prof. Asen Zlatarov University, Bourgas-8010, Bulgaria
ssotirov@btu.bg
Maciej Krawczak
Systems Research lnstitute - Polish Academy of Sciences, ul. Newelska 6, OL-447 Warsaw, Poland
krawczak@ibspan.waw.pl
Presented at: 21st International Conference on Intuitionistic Fuzzy Sets, 22–23 May 2017, Burgas, Bulgaria
Published in: "Notes on Intuitionistic Fuzzy Sets", Volume 23, 2017, Number 2, pages 111—118
Download:  PDF (157 Kb  Kb, File info)
Abstract: In the present paper a facial recognition approach using a reduced set of image values as a training vector is presented. The image simplification is performed by using the calculated Eigenvector of an image to train a neural network. It results lower processing times for rough image recognition. This approach is ideal for rough facial acquisition in dynamic background where it can be used as an early detection system. The degree of coincidence is stated by an intuitionistic fuzzy estimation. To verify the approach correctness an experiment involving variety of tests over human and non-human on objects of is carried out.
Keywords: Intuitionistic fuzzy sets, Facial recognition, Image recognition, Eigenvalues, Neural networks.
AMS Classification: 03E72.
References:
  1. Gavrilova, M. L., Ahmed, F., Azam, S., Paul, P. P., Rahman, W., Sultana, M., & Zohra, F. T. (2016). Emerging trends in security system design using the concept of social behavioural biometrics, Information Fusion for Cyber Security Analytics, Studies in Computational Intelligence, Volume 691, 229–251, Springer.
  2. Hagan, M., Demuth, H., & Beale, M. (1996). Neural Network Design. PWS Publishing, Boston.
  3. Haykin, S. (1994). Neural Networks: A Comprehensive Foundation. Macmillan, New York.
  4. Chemsi, M., Agbossou, K., & Cardenas, A. (2016). Neural network backpropagation algorithm control for PEM fuel cell in residential applications, 2016 IEEE Electrical Power and Energy Conference (EPEC), 12-14 Oct. 2016, Ottawa, ON, Canada.
  5. Deschrijver, G., Cornelis, C., & Kerre, E. E. (2004). On the Representation of Intuitionistic Fuzzy t-Norms and t-Conorms, IEEE Trans. on Fuzzy Systems, 12(1), 45–61.
  6. Murphy, T., & Schultz, R. (2014). A Viola-Jones based hybrid face detection framework, Proceedings of SPIE, The International Society for Optical Engineering, Volume 9025.
  7. Rashidan, M. A., Mustafah, Y. M., Abidin, Z. Z., Zainuddin, N. A., & Aziz, N. N. A. (2014). Analysis of artificial neural network and Viola-Jones algorithm based moving object detection, Int. Conf. on Computer and Communication Engineering (ICCCE), 251–254.
  8. Atanassov, K. (2012). On Intuitionistic Fuzzy Sets Theory. Springer, Berlin.
Citations:

The list of publications, citing this article may be empty or incomplete. If you can provide relevant data, please, write on the talk page.