ANALYSIS OF METHODS FOR DETECTING FACES IN AN IMAGE
DOI:
https://doi.org/10.37943/AITU.2021.48.48.007Keywords:
computer vision, face recognition, Kotropoulos & Pitas methodAbstract
In this article, computer vision is considered as modern technology of automatic processing of graphic images, and the relationship between the terms “computer vision” and “machine vision” is investigated. A diagram of a typical computer vision system is given and the possibility of using a system based on an artificial neural network for image analysis is considered. The article analyses the current situation with the use of computer vision systems and the possibility of its application. This article presents face recognition algorithms for existing categories, including: empirical method; feature method – invariant feature; use the template specified by the developer for identification; study the method of detecting the system by external signs. The empirical method of “top-down knowledge-based methods” involves creating an algorithm that implements a set of rules that image segments must satisfy in order to be recognized as faces. Feature-invariant approaches (Feature-invariant approaches) based on bottom-up knowledge constitute the second group of face detection methods. The methods of this group have the ability to recognize faces in different places as an advantage. Use the template set by the developer for identification (template matching method). Templates define
specific standard images of face images, for example, describing the attributes of different areas of the face and their possible mutual positions. A method for detecting faces by external signs (a method for performing the training stage of the system by processing test images). The image (or its fragments) is somehow assigned a calculated feature vector, which is used to classify the image into two categories – human face/non-human face.
References
G. Yang and Thomas S. Huang. «Human face detection in a complex background. Pattern Recognition», 27 (1):53–63, 1994.
C. Kotropoulos, I. Pitas. «Acoustics, Speech, and Signal Processing», 1997. ICASSP-97, 1997 IEEE International Conference on p.2537–2540 v.4.
T.K. Leung, M.C. Burl, P. Perona. «Finding Faces in Cluttered Scenes Using Random Labeled Graph Matching».
K.C. Yow, R Cipolla, «Feature-based human face detection», Image and vision computing 15 (9), p. 713-735, 1997.
Sinha, P. (1996). «Perceiving and Recognizing threedimensional forms» PhD thesis, Massachusetts Institue of Technology.
Lanitis, A.; Taylor, C.J.; Ahmed, T.; Cootes, T.F.; Wolfson «Image Anal. Classifying variable objects using a flexible shape model» Image Processing and its Applications, 1995., p.70-74.
P. Viola and M. J. Jones, «Rapid Object Detection using a Boosted Cascade of Simple Features», proceedings IEEE Conf. on Computer Vision and Pattern Recognition (CVPR 2001), 2001, vol. 1, p-511 — p-518.
P. Viola and M. J. Jones, «Robust real-time face detection», International Journal of Computer Vision, vol. 57, no. 2, 2004., pp. 137-154.
Buchatskiy, A.N., Tatarenkov D.A., “Selection of the Optimal Color Space for Reducing False Positives Rate in the Viola-Jones Method”, Actual problems of infotelecommunications in science and education, II International Scientific-technical and Scientific-methodological Conference. St. Petersburg, 2013.
L. Neumann and J. Matas. A method for text localization and recognition in real-world images. 2010
A.I. Dzhangarov, M.A. Suleymanova and A.L. Zolkin. Face recognition methods. IOP Conference Series: Materials Science and Engineering.
“Creating a face recognition model using deep learning in Python”. https://sudonull.com/post/6434
Adil Sarsenov, Konstantin Latuta. “Face Recognition Based on Facial Landmarks”, 2017 IEEE 11th International Conference on Application of Information and Communication Technologies (AICT), 2017.
“Intelligent Systems and Applications”, Springer Science and Business Media LLC, 2019.
A.S. Miroshnikov, I.A. Berko, A.A. Berko. “Optimization Method for the Parallel Algorithm for Finding Faces in Graphic Images”, 2021 International Conference on Industrial Engineering, Applications and Manufacturing (ICIEAM), 2021.
Downloads
Published
How to Cite
Issue
Section
License
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Authors who publish a manuscript in this journal agree to the following terms:
- The authors reserve the right to authorship of their work and transfer to the journal the right of first publication under the terms of the Creative Commons Attribution License, which allows others to freely distribute the published work with a mandatory link to the the original work and the first publication of the work in this journal.
- Authors have the right to conclude independent additional agreements that relate to the non-exclusive distribution of the work in the form in which it was published by this journal (for example, to post the work in the electronic repository of the institution or publish as part of a monograph), providing the link to the first publication of the work in this journal.
- Other terms stated in the Copyright Agreement.