DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE

Face recognition system is a system that is capable of identifying an individual’s face based on the features of the face. Face recognition system have significantly improved in recent years and used for many applications, especially for surveillance. Face recognition system need high speed and good...

Full description

Saved in:
Bibliographic Details
Main Author: Andhika, Nixon
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/55848
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:55848
spelling id-itb.:558482021-06-19T17:55:25ZDEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE Andhika, Nixon Indonesia Final Project face recognition, low resolution, convolutional network. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/55848 Face recognition system is a system that is capable of identifying an individual’s face based on the features of the face. Face recognition system have significantly improved in recent years and used for many applications, especially for surveillance. Face recognition system need high speed and good accuracy to be reliable enough to be used for surveillance. However, the performance of current state-of-the-art systems drops significantly when low-resolution face images is used. This, in turn, limits the application of face recognition system for surveillance that commonly only have low-resolution images. There are currently several low resolution face recognition systems, but they have several problems and their accuracies are still low. To solve these issues, this work develops a low resolution face recognition system with deep convolutional network. The system comprises of three components, which are face detection and extraction component, preprocessing component, and face recognition component. Experiments are done to determine the best techniques with good quality result and high speed for each component of the system. After comparison and evaluation at each component’s experiment, the best technique is chosen for the component. For face detection and extraction component, face detection technique SSD is chosen. For preprocessing component, super resolution technique CARN is chosen. For face recognition component, face embedding technique FaceNet is chosen with k-Nearest Neighbors classifier. The system is evaluated for recognition task using four versions of cleaned Labelled Faces in the Wild dataset, which are composed of one high-resolution version and three low-resolution versions with resolution of 32×32, 24×24, and 16×16 pixels. Based on the evaluation results, the developed system gains accuracy of 75.65% for 16×16 resolution, 96.08% for 24×24 resolution, 98.39% for 32×32 resolution, and 99.7% for high resolution. The system speed is 6 FPS for low-resolution images and 9 FPS for high-resolution images using Nvidia GTX 1050 GPU. 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 Face recognition system is a system that is capable of identifying an individual’s face based on the features of the face. Face recognition system have significantly improved in recent years and used for many applications, especially for surveillance. Face recognition system need high speed and good accuracy to be reliable enough to be used for surveillance. However, the performance of current state-of-the-art systems drops significantly when low-resolution face images is used. This, in turn, limits the application of face recognition system for surveillance that commonly only have low-resolution images. There are currently several low resolution face recognition systems, but they have several problems and their accuracies are still low. To solve these issues, this work develops a low resolution face recognition system with deep convolutional network. The system comprises of three components, which are face detection and extraction component, preprocessing component, and face recognition component. Experiments are done to determine the best techniques with good quality result and high speed for each component of the system. After comparison and evaluation at each component’s experiment, the best technique is chosen for the component. For face detection and extraction component, face detection technique SSD is chosen. For preprocessing component, super resolution technique CARN is chosen. For face recognition component, face embedding technique FaceNet is chosen with k-Nearest Neighbors classifier. The system is evaluated for recognition task using four versions of cleaned Labelled Faces in the Wild dataset, which are composed of one high-resolution version and three low-resolution versions with resolution of 32×32, 24×24, and 16×16 pixels. Based on the evaluation results, the developed system gains accuracy of 75.65% for 16×16 resolution, 96.08% for 24×24 resolution, 98.39% for 32×32 resolution, and 99.7% for high resolution. The system speed is 6 FPS for low-resolution images and 9 FPS for high-resolution images using Nvidia GTX 1050 GPU.
format Final Project
author Andhika, Nixon
spellingShingle Andhika, Nixon
DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
author_facet Andhika, Nixon
author_sort Andhika, Nixon
title DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
title_short DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
title_full DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
title_fullStr DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
title_full_unstemmed DEVELOPMENT OF LOW RESOLUTION FACE RECOGNITION SYSTEM WITH DEEP CONVOLUTIONAL NETWORK FOR REAL- TIME SURVEILLANCE
title_sort development of low resolution face recognition system with deep convolutional network for real- time surveillance
url https://digilib.itb.ac.id/gdl/view/55848
_version_ 1822002184457289728