ABSTRACT
In practice, identification of
criminal in Nigeria is done through thumbprint identification. However, this
type of identification is constrained as most of criminal nowadays getting
cleverer not to leave their thumbprint on the scene. With the advent of
security technology, cameras especially CCTV have been installed in many public
and private areas to provide surveillance activities. The footage of the CCTV
can be used to identify suspects on scene. However, because of limited software
developed to automatically detect the similarity between photo in the footage
and recorded photo of criminals, the law enforce thumbprint identification. In
this study, an automated facial recognition system for criminal database was
proposed using known Principal Component Analysis approach. This system will be
able to detect face and recognize face automatically. This will help the law
enforcements to detect or recognize suspect of the case if no thumbprint
present on the scene. The results show that about 80% of input photo can be
matched with the template data.
CHAPTER
ONE
INTRODUCTION
Over the years, a lot of security
approaches have been developed that help in keeping confidential data secured
and limiting the chances of a security breach. Face recognition which is one of
the few biometric methods that possess the merits of both high accuracy and low
intrusiveness is a computer program that uses a person’s face to automatically
identify and verify the person from a digital image or a video frame from a
video source [1, 2, 3]. It compares selected facial features from the image and
a face database or it can also be a hardware which used to authenticate a
person. This technology is a widely used biometrics system for authentication,
authorization, verification and identification. A lot of company has been using
face recognition in their security cameras, access controls and many more.
Facebook has been using face recognition in their website for the purpose of
creating a digital profile for the people using their website. In developed
countries, the law enforcement create face database to be used with their face
recognition system to compare any suspect with the database. In other hand, in
Malaysia, most cases are investigated by using thumbprint identification to identify
any suspect for the case. However, because of unlimited knowledge through
internet usage, most criminals are aware of thumbprint identification.
Therefore, they become more cautious of leaving thumbprint by wearing gloves
except for non-premeditated crimes. This paper to propose a facial recognition
system for a criminal database where the identification of the suspect is done
by face matched rather than thumbprint matched.
The
objective of this study is two-fold:
1. Matching a face with available
database accurately.
2. Applying principal component
analysis for finding distinguishable features from many images to get the
similarity for the target image. The remaining of this study is structured as
follows. Next section discusses on related concepts of this study and relevant
previous works, design and development describes the whole processes of system
development, result and discussion highlights the outcomes and advantages, and
final section outlines conclusion and future work.
OVERVIEW
OF FACE RECOGNITION SYSTEMS
Face Recognition for Criminal
Identification is a face recognition system in which the security expert will
input an image of the person in question inside the system and the system will
first preprocess the image which will cause unwanted elements such as noise to
be removed from the image. After that, the system will then classify the image
based on its landmarks for example, the distance between the eyes, the length
of the jaw line, etc. Then, the system will run a search through the database
to find its perfect match and display the output. This work is focusing on
implementing the system for criminal identification. Current practice of
thumbprint identification which is simple and easy to be implemented can be
challenge by the use of latent thumbprint and sometimes cannot be acquired from
the crime scene. The criminals have become cleverer and normally be very
careful in leaving any thumbprint on the scene. This system encompassed face
database and an image processing algorithm to match the face feed with faces
stored in the database. There are two parts vital to the success of this
system; detection and recognition. A face detection is one of the most
important steps in a face recognition system and can be classified into four
principle categories; knowledge based, feature invariant, template matching and
appearance-based methods [4]. In recognition, two stages are required; training
process and evaluation process. In a training process, the algorithm is fed
samples of the images to be learned and a distinct model for each image is
determined while in an evaluation process, a model of a newly acquired test
image is compared against all existing models in the database. Then the near
corresponding model is acquired to determine whether the recognition is
triggered [5]. In this stage, a statistical procedure, Principal Component
Analysis (PCA) is used to on a collection of face images to form a set of basis
features, which is called a set of eigenfaces. Any human face can be considered
to be a combination of these standard face.
TOPIC: FACE RECOGNITION FOR CRIMINAL IDENTIFICATION: AN IMPLEMENTATION OF PRINCIPAL COMPONENT ANALYSIS FOR FACE RECOGNITION
Format: MS Word
Chapters: 1 - 5
Delivery: Email
Delivery: Email
Number of Pages: 65
Price: 3000 NGN
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