RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM

Face recognition is one of the applications in image processing that recognizes or checks an individual's identity. 2D images are used to identify the face, but the problem is that this kind of image is very sensitive to changes in lighting and various angles of view. The images captured by 3...

Full description

Bibliographic Details
Main Authors: Sunil Kumar B L, Sharmila Kumari M
Format: Article
Language:English
Published: Polish Association for Knowledge Promotion 2021-09-01
Series:Applied Computer Science
Subjects:
Online Access:http://www.acs.pollub.pl/pdf/v17n3/6.pdf
id doaj-5763719645cc497c91d94b222310eb28
record_format Article
spelling doaj-5763719645cc497c91d94b222310eb282021-10-04T17:17:37ZengPolish Association for Knowledge PromotionApplied Computer Science1895-37352353-69772021-09-01173738110.23743/acs-2021-22RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHMSunil Kumar B L0https://orcid.org/0000-0002-7406-036XSharmila Kumari M1https://orcid.org/0000-0002-0707-0891Canara Engineering College, India, blsuny@gmail.comPA College of Engineering, India, sharmilabp@gmail.comFace recognition is one of the applications in image processing that recognizes or checks an individual's identity. 2D images are used to identify the face, but the problem is that this kind of image is very sensitive to changes in lighting and various angles of view. The images captured by 3D camera and stereo camera can also be used for recognition, but fairly long processing times is needed. RGB-D images that Kinect produces are used as a new alternative approach to 3D images. Such cameras cost less and can be used in any situation and any environment. This paper shows the face recognition algorithms’ performance using RGB-D images. These algorithms calculate the descriptor which uses RGB and Depth map faces based on local binary pattern. Those images are also tested for the fusion of LBP and DCT methods. The fusion of LBP and DCT approach produces a recognition rate of 97.5% during the experiment.http://www.acs.pollub.pl/pdf/v17n3/6.pdfrgb-dkinectlocal binary patternpattern recognitionfeature extractionhistogramface recognition
collection DOAJ
language English
format Article
sources DOAJ
author Sunil Kumar B L
Sharmila Kumari M
spellingShingle Sunil Kumar B L
Sharmila Kumari M
RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
Applied Computer Science
rgb-d
kinect
local binary pattern
pattern recognition
feature extraction
histogram
face recognition
author_facet Sunil Kumar B L
Sharmila Kumari M
author_sort Sunil Kumar B L
title RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
title_short RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
title_full RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
title_fullStr RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
title_full_unstemmed RGB-D FACE RECOGNITION USING LBP-DCT ALGORITHM
title_sort rgb-d face recognition using lbp-dct algorithm
publisher Polish Association for Knowledge Promotion
series Applied Computer Science
issn 1895-3735
2353-6977
publishDate 2021-09-01
description Face recognition is one of the applications in image processing that recognizes or checks an individual's identity. 2D images are used to identify the face, but the problem is that this kind of image is very sensitive to changes in lighting and various angles of view. The images captured by 3D camera and stereo camera can also be used for recognition, but fairly long processing times is needed. RGB-D images that Kinect produces are used as a new alternative approach to 3D images. Such cameras cost less and can be used in any situation and any environment. This paper shows the face recognition algorithms’ performance using RGB-D images. These algorithms calculate the descriptor which uses RGB and Depth map faces based on local binary pattern. Those images are also tested for the fusion of LBP and DCT methods. The fusion of LBP and DCT approach produces a recognition rate of 97.5% during the experiment.
topic rgb-d
kinect
local binary pattern
pattern recognition
feature extraction
histogram
face recognition
url http://www.acs.pollub.pl/pdf/v17n3/6.pdf
work_keys_str_mv AT sunilkumarbl rgbdfacerecognitionusinglbpdctalgorithm
AT sharmilakumarim rgbdfacerecognitionusinglbpdctalgorithm
_version_ 1716843892799700992