Building a 3D Form to Recognize Facial Images

Authors

  • Yousuf A. Maneetah Computer sciences Department, Benghazi University, Benghazi, Libya.

DOI:

https://doi.org/10.37375/sjfssu.v2i1.130

Keywords:

Image Recognition, Multilayer Neural Networks, ,3D Image, Pattern Recognition, Correlation, Model.

Abstract

There are several problems with the ability to recognize facial images, so the image was built in a 3D format, which allows users to evaluate and form the necessary properties of the entire object, while it is impossible to do this in two-dimensional form. Reprinting an object in an image form enables most of the properties of the target image by using layer-based neural networks that learn sequentially with discrete mathematical structures. A two-dimensional image is taken, and then the 3D shape is used in the image to spatially renovate it while different noise levels and different lighting levels are considered. This paper aims to show that the model for reconstructing the three-dimensional image reveals the dilemma of defining the basic characteristics of the image as a whole in all cases of interference, even if the viewpoint of taking the image changes. The processing has several stages. First, input the data processing result obtained in the previous level into the next level input to get the final result. After training, the first level sequences are represented as graphs, and then the input image data is sent to the first layer of the recognition model to calculate h. Consistent activation of learning validity for each subsequent level of the proposed model of reprinting an object in an image completely solves the problem of identifying a person from the front image as a whole under interference and regardless of the change in the perspective image.

References

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Published

2022-04-17

How to Cite

Maneetah, Y. A. (2022). Building a 3D Form to Recognize Facial Images. Scientific Journal for Faculty of Science-Sirte University, 2(1), 9–14. https://doi.org/10.37375/sjfssu.v2i1.130

Issue

Section

COMPUTER SCIENCES