3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE

A biometric system uses a unique part of the human body to verify, for example, the face. Face is naturally the most commonly used for verification, but face is also a very complex part due to many internal and external factors that affect facial features, such as lighting, camera position, facial e...

Full description

Saved in:
Bibliographic Details
Main Author: Qomalita Hijriana, Zalid
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/59466
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:59466
spelling id-itb.:594662021-09-09T11:24:28Z3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE Qomalita Hijriana, Zalid Indonesia Theses low resolution image, super resolution, 3D reconstruction, DCNN+blok SE, verification. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/59466 A biometric system uses a unique part of the human body to verify, for example, the face. Face is naturally the most commonly used for verification, but face is also a very complex part due to many internal and external factors that affect facial features, such as lighting, camera position, facial expressions, and the presence of occlusion. Moreover, the use of surveillance cameras in public areas nowadays is increasing. Facial images obtained from surveillance cameras usually are in a low resolution because they are taken from a long distance. Low-resolution images are difficult to verify because they lose a lot of important information from the image. In this study, the super-resolution method was applied to deal with the problem of low-resolution input images. Evaluation of three super-resolution methods, namely Efficient Sub-Pixel Convolutional Neural Network (ESPCN), Enhanced Deep Super-Resolution (EDSR), and Fast Super-Resolution Convolutional Neural Network (FSRCNN), was conducted to choose the best super-resolution method for face verification task. To reduce the effect of pose variations, 3D features were added. It was obtained from the reconstruction of 2D images into 3D and then 3D feature extraction was carried out with Deep Convolutional Neural Network (DCNN) with the addition of Squeeze and Excitation Network (SE) blocks. The results showed that verification using the FSRCNN super-resolution method followed by 3D reconstruction and 3D feature extraction based on the DCNN+blockSE configuration, with network depth 26 and stride 2, obtain 80.07% in accuracy. This result is 11.71% higher than the baseline using FaceNet with bicubic interpolation. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description A biometric system uses a unique part of the human body to verify, for example, the face. Face is naturally the most commonly used for verification, but face is also a very complex part due to many internal and external factors that affect facial features, such as lighting, camera position, facial expressions, and the presence of occlusion. Moreover, the use of surveillance cameras in public areas nowadays is increasing. Facial images obtained from surveillance cameras usually are in a low resolution because they are taken from a long distance. Low-resolution images are difficult to verify because they lose a lot of important information from the image. In this study, the super-resolution method was applied to deal with the problem of low-resolution input images. Evaluation of three super-resolution methods, namely Efficient Sub-Pixel Convolutional Neural Network (ESPCN), Enhanced Deep Super-Resolution (EDSR), and Fast Super-Resolution Convolutional Neural Network (FSRCNN), was conducted to choose the best super-resolution method for face verification task. To reduce the effect of pose variations, 3D features were added. It was obtained from the reconstruction of 2D images into 3D and then 3D feature extraction was carried out with Deep Convolutional Neural Network (DCNN) with the addition of Squeeze and Excitation Network (SE) blocks. The results showed that verification using the FSRCNN super-resolution method followed by 3D reconstruction and 3D feature extraction based on the DCNN+blockSE configuration, with network depth 26 and stride 2, obtain 80.07% in accuracy. This result is 11.71% higher than the baseline using FaceNet with bicubic interpolation.
format Theses
author Qomalita Hijriana, Zalid
spellingShingle Qomalita Hijriana, Zalid
3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
author_facet Qomalita Hijriana, Zalid
author_sort Qomalita Hijriana, Zalid
title 3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
title_short 3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
title_full 3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
title_fullStr 3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
title_full_unstemmed 3D FACE VERIFICATION FROM SINGLE LOW RESOLUTION IMAGE BASED ON EXPLOITATION DEEP CONVOLUTIONAL FEATURE
title_sort 3d face verification from single low resolution image based on exploitation deep convolutional feature
url https://digilib.itb.ac.id/gdl/view/59466
_version_ 1822931079941586944