Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images

Screening patients with genetic diseases using automated facial image analysis is an urgent task. A method for recognizing genetic syndromes from a frontal image of a face has been developed and studied. The classification was made to 8 syndromes (Angelman, Apert, Cornelia de Lange, Down, Fragile X,...

Full description

Bibliographic Details
Main Authors: Vyacheslav Kumov, Andrey Samorodov
Format: Article
Language:English
Published: FRUCT 2020-04-01
Series:Proceedings of the XXth Conference of Open Innovations Association FRUCT
Subjects:
Online Access:https://www.fruct.org/publications/fruct26/files/Kum.pdf
id doaj-83736d88a75d4dbc9137988a9e6bce34
record_format Article
spelling doaj-83736d88a75d4dbc9137988a9e6bce342020-11-25T02:26:16ZengFRUCTProceedings of the XXth Conference of Open Innovations Association FRUCT2305-72542343-07372020-04-0126124024610.23919/FRUCT48808.2020.9087456Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face ImagesVyacheslav Kumov0Andrey Samorodov1BMSTU, RussiaBMSTU, RussiaScreening patients with genetic diseases using automated facial image analysis is an urgent task. A method for recognizing genetic syndromes from a frontal image of a face has been developed and studied. The classification was made to 8 syndromes (Angelman, Apert, Cornelia de Lange, Down, Fragile X, Progeria, Treacher Collins, Williams). Various types of features were investigated: geometric and deep features. For facial points localization, 3D face reconstruction was used (using the Deep3DFaceReconstruction library). Sets of 68 and 35709 (all points of 3D reconstruction) points were investigated. The effect of reducing the dimension of the feature vector on the classification accuracy is also investigated. According to the results of 5-fold cross-validation, the best average recognition accuracy was 92.5 % (combined features, Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA) and logistic regression), which is comparable to the results in similar works.https://www.fruct.org/publications/fruct26/files/Kum.pdfsyndrome recognitionfacial imagecomputer vision
collection DOAJ
language English
format Article
sources DOAJ
author Vyacheslav Kumov
Andrey Samorodov
spellingShingle Vyacheslav Kumov
Andrey Samorodov
Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
Proceedings of the XXth Conference of Open Innovations Association FRUCT
syndrome recognition
facial image
computer vision
author_facet Vyacheslav Kumov
Andrey Samorodov
author_sort Vyacheslav Kumov
title Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
title_short Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
title_full Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
title_fullStr Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
title_full_unstemmed Recognition of Genetic Diseases Based on Combined Feature Extraction From 2D Face Images
title_sort recognition of genetic diseases based on combined feature extraction from 2d face images
publisher FRUCT
series Proceedings of the XXth Conference of Open Innovations Association FRUCT
issn 2305-7254
2343-0737
publishDate 2020-04-01
description Screening patients with genetic diseases using automated facial image analysis is an urgent task. A method for recognizing genetic syndromes from a frontal image of a face has been developed and studied. The classification was made to 8 syndromes (Angelman, Apert, Cornelia de Lange, Down, Fragile X, Progeria, Treacher Collins, Williams). Various types of features were investigated: geometric and deep features. For facial points localization, 3D face reconstruction was used (using the Deep3DFaceReconstruction library). Sets of 68 and 35709 (all points of 3D reconstruction) points were investigated. The effect of reducing the dimension of the feature vector on the classification accuracy is also investigated. According to the results of 5-fold cross-validation, the best average recognition accuracy was 92.5 % (combined features, Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA) and logistic regression), which is comparable to the results in similar works.
topic syndrome recognition
facial image
computer vision
url https://www.fruct.org/publications/fruct26/files/Kum.pdf
work_keys_str_mv AT vyacheslavkumov recognitionofgeneticdiseasesbasedoncombinedfeatureextractionfrom2dfaceimages
AT andreysamorodov recognitionofgeneticdiseasesbasedoncombinedfeatureextractionfrom2dfaceimages
_version_ 1724848141411287040