Development and analysis of embedded face recognition system using Raspberry Pi

Human Face is the most visible part which can be used to recognize persons. There are many available systems for face recognition in the market, but they are bulky and expensive. The implementation of face recognition techniques in an embedded system is a very important aspect. This project involve...

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Main Author: Falah Hassan, Alwan
Format: Thesis
Language:English
Published: Universiti Malaysia Perlis (UniMAP) 2019
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Online Access:http://dspace.unimap.edu.my:80/xmlui/handle/123456789/61835
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spelling my.unimap-618352019-09-12T06:29:52Z Development and analysis of embedded face recognition system using Raspberry Pi Falah Hassan, Alwan Human face recognition Raspberry Pi (Computer) Embedded system Face recognition system Face recognition system -- Design and construction Human Face is the most visible part which can be used to recognize persons. There are many available systems for face recognition in the market, but they are bulky and expensive. The implementation of face recognition techniques in an embedded system is a very important aspect. This project involves design of a real-time, portable, low embedded cost face recognition system. Implementation and analysis of face recognition techniques on an embedded system, the development phase consists of Single Board Computer (SBC, Raspberry Pi (Model A) as process unite, and GNU/Linux based Embedded Raspbian Operating system is used as application development platform. This project focuses to apply the face recognition algorithm that is suitable with Raspberry Pi (Model A) The proposed system is implemented using ARM11 processor and inefficient memory on Raspberry Pi (Model A) board, to get an acceptable performance of the system, the images are captured at resolution (320×240), the system needs ≈ 2.1 sec to process the captured images, The performance of the embedded system is done by evaluating detection time and recognition time (is 1.75 sec, between 0.29 sec to 0.74 sec) respectively, together with CPU utilization and RAM utilization (33%, 17.75%) for detection and (36.5%, 22%) for recognition. Results obtained shows that the overall performance on the embedded system can be increased when motion detection techniques is applied. 2019-09-12T06:29:52Z 2019-09-12T06:29:52Z 2015 Thesis http://dspace.unimap.edu.my:80/xmlui/handle/123456789/61835 en Universiti Malaysia Perlis (UniMAP) School of Computer and Communication Engineering
institution Universiti Malaysia Perlis
building UniMAP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Perlis
content_source UniMAP Library Digital Repository
url_provider http://dspace.unimap.edu.my/
language English
topic Human face recognition
Raspberry Pi (Computer)
Embedded system
Face recognition system
Face recognition system -- Design and construction
spellingShingle Human face recognition
Raspberry Pi (Computer)
Embedded system
Face recognition system
Face recognition system -- Design and construction
Falah Hassan, Alwan
Development and analysis of embedded face recognition system using Raspberry Pi
description Human Face is the most visible part which can be used to recognize persons. There are many available systems for face recognition in the market, but they are bulky and expensive. The implementation of face recognition techniques in an embedded system is a very important aspect. This project involves design of a real-time, portable, low embedded cost face recognition system. Implementation and analysis of face recognition techniques on an embedded system, the development phase consists of Single Board Computer (SBC, Raspberry Pi (Model A) as process unite, and GNU/Linux based Embedded Raspbian Operating system is used as application development platform. This project focuses to apply the face recognition algorithm that is suitable with Raspberry Pi (Model A) The proposed system is implemented using ARM11 processor and inefficient memory on Raspberry Pi (Model A) board, to get an acceptable performance of the system, the images are captured at resolution (320×240), the system needs ≈ 2.1 sec to process the captured images, The performance of the embedded system is done by evaluating detection time and recognition time (is 1.75 sec, between 0.29 sec to 0.74 sec) respectively, together with CPU utilization and RAM utilization (33%, 17.75%) for detection and (36.5%, 22%) for recognition. Results obtained shows that the overall performance on the embedded system can be increased when motion detection techniques is applied.
format Thesis
author Falah Hassan, Alwan
author_facet Falah Hassan, Alwan
author_sort Falah Hassan, Alwan
title Development and analysis of embedded face recognition system using Raspberry Pi
title_short Development and analysis of embedded face recognition system using Raspberry Pi
title_full Development and analysis of embedded face recognition system using Raspberry Pi
title_fullStr Development and analysis of embedded face recognition system using Raspberry Pi
title_full_unstemmed Development and analysis of embedded face recognition system using Raspberry Pi
title_sort development and analysis of embedded face recognition system using raspberry pi
publisher Universiti Malaysia Perlis (UniMAP)
publishDate 2019
url http://dspace.unimap.edu.my:80/xmlui/handle/123456789/61835
_version_ 1651868566052405248
score 13.214268