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Biometrics Technology Pavan Kumar M.T. Visvesvaraya Technological University Santhibastawad Road, Machhe Belgaum-590 014, Karnataka SEMINAR REPORT On BIOMETRICS TECHNOLOGYSubmitted in partial fulfillment of the requirements for the degree of Bachelor of Engineering in Electronics & Communications prescribed by Visvesvaraya Technological University. Submitted by PAVAN KUMAR M.T. 1VK06EC045 Under The Guidance Of Smt. Vidya E.V. Asst. Professor, Dept. of TE. VKIT, Bangalore Dept. of E&C, VKIT 2010 1
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Biometrics Technology Seminar Report.

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Page 1: Biometrics Technology Seminar Report.

Biometrics Technology Pavan Kumar M.T.

Visvesvaraya Technological UniversitySanthibastawad Road, MachheBelgaum-590 014, Karnataka

SEMINAR REPORT

On

“BIOMETRICS TECHNOLOGY”

Submitted in partial fulfillment of the requirements for the degree ofBachelor of Engineering in Electronics & Communications prescribed by

Visvesvaraya Technological University.

Submitted by

PAVAN KUMAR M.T. 1VK06EC045

Under The Guidance Of

Smt. Vidya E.V.Asst. Professor, Dept. of TE.

VKIT, Bangalore

DEPARTMENT OF ELECTRONICS & COMMUNICATION ENGINEERING

VIVEKANANDA INSTITUTE OF TECHNOLOGYGUDIMAVU, KUMBALGODU, BANGALORE-560 074

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Janatha Education Society (Regd.)

VIVEKANANDA INSTITUTE OF TECHNOLOGYGudimavu, Kumbalgodu, Kengeri Hobli, Bangalore-560 074.

DEPARTMENT OF ELECTRONICS & COMMUNICATION

ENGINEERING

CertificateThis is to Certify that the seminar work entitled BIOMETRICS TECHNOLOGY is a

bonafied work carried out by Pavan Kumar M.T. bearing USN 1VK06EC045 in partial

fulfillment for the award of degree of Bachelor of Engineering in Electronics &

communication of the Visvesvaraya Technological University, Belgaum during

the year 2009-10 It is certified that all corrections/suggestions indicated for

internal assessment have been incorporated in the report deposited in the library.

The seminar report has been approved, as it satisfies the academic requirements in

respect of Seminar Work prescribed for the Bachelor of Engineering Degree.

Signature of the Guide Signature of the HOD

Smt. Vidya E.V. Prof.K.V.MahendraPrashanth

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Acknowledgement

The satisfaction and euphoria that accompany the successful completion of any task

would be incomplete without the people who made it possible, whose constant guidance and

encouragement crowned our efforts with success.

My primary thanks goes to our beloved Principal Dr. Doddanna Hemanth, Vivekananda

Institute of Technology, Bangalore for his kind support that he has provided throughout this

effort.

I would like to thank Prof. K.V.Mahendra Prasanth, HOD, Department of EC/TE,

Vivekananda Institute of Technology, Bangalore for his valuable guidance and assistance.

I would like to thank my guide Smt. Vidya E.V., Asst. Professor, Department of TE,

Vivekananda Institute of Technology, Bangalore for her suggestions, guidance and

encouragement in successful completion of this technical task.

Finally, I would like to immensely thank my parents and all my friends for their constant

support and encouragement which was the fuel propelling my effort.

PAVAN KUMAR M.T.

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Abstract

In this Hi-Tech era, there is a great demand to identify and authenticate the

individuals. Till now we are totally dependent upon Passwords and Pin Numbers for

identification. How secure are passwords? With the numerous passwords that an individual has

to remember, they are often forgotten, misplaced, or stolen. Think of how many different

passwords you have to remember: computer passwords, internet site logons and passwords, PIN

numbers for the ATM and for credit cards, the list goes on. We are arriving at a conclusion that

these technologies are not sufficient for the security of an individual as these are hard to

remember, easily transferable, easily stolen and there are many weaknesses. Due to these

weaknesses biometrics came into existence.

Biometrics is that study of science that deals with personal human behavioral and

physiological characteristics and such as fingerprints, handprints, iris scanning, voice scanning,

face recognition and signature recognition. These technologies are far more promising than that

which are used currently to identify an individual. This paper highlights some of the benefits and

the few limitations of using biometrics for authentication .With biometrics it doesn’t matter if

we forget your password or lose your smart card.

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Contents

1. Chapter 1 : Introduction and History 1

1.1 Introduction 1

1.2 History 2

2. Chapter 2 : Block Diagram of Biometric System 4

3. Chapter 3 : Classification of Biometrics 6

3.1 Fingerprint 6

3.2 Face Recognisation 8

3.3 Hand Geometry 12

3.4 Iris Recognisation 13

3.5 Speaker Recognisation 14

3.6 Signature Recognisation 16

3.7 Gesture Recognisation 17

3.8 Multimodal Biometrics 18

4. Chapter 4 : System Accuracy and Comparison 19

4.1 System Accuracy 19

4.2 Comparison of Biometrics Technology 20

5. Chapter 5 : Applications 21

5.1 Eye-gazed System 21

5.2 Televisions Controlled by Hand Gestures 22

5.3 Mimi Switch 22

5.4 Controller Free Gaming 22

6. Conclusion and Future Works 24

References 2

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Chapter 1

Introduction and History

1.1 Introduction:-

The term "biometrics" is derived from the Greek words bio means “life” and

metric means “to measure”.

BIOMETRICS refers to the automatic identification of a person based on his

physiological / behavioral characteristics. This method of identification is preferred for

various reasons; the person to be identified is required to be physically present at the

point of identification; identification based on biometric techniques obviates the need to

remember a password or carry a token.

A biometric is a unique, measurable characteristic or trait for automatically

recognizing or verifying the identity of a human being. Biometrics is a powerful

combination of science and technology that can be used to protect and secure our most

valuable information and property.

With the increased use of computers or vehicles of information technology, it is

necessary to restrict access to sensitive or personal data. By replacing PINs, biometric

techniques can potentially prevent unauthorized access to fraudulent use of ATMs,

cellular phones, smart cards, desktop PCs, workstations, and computer networks. PINs

and passwords may be forgotten, and token based methods of identification like passports

and driver’s licenses may be forged, stolen, or lost .Thus biometric systems of

identification are enjoying a renewed interest.

Recognisation requires the system to look through many stored sets of

characteristics and pick the one that matches the unknown individual being presented.

Various types of biometric systems are being used for real–time identification; the most

popular are based on face recognition and fingerprint matching. However there are

other biometric systems that utilize iris and retinal scan, speech, gesture recognisation,

and hand geometry.

Biometric technologies are becoming the foundation of an extensive array of

highly secure identification and personal verification solutions. The basic idea behind

biometrics is that our bodies contain unique properties that can be used to distinguish us

from others. A biometric system is essentially a pattern recognition system, which

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makes a personal identification by determining the authenticity of a specific physiological

or behavioral characteristics possessed by the user.

An important issue in designing a practical system is to determine how an

individual is identified. Depending on the context, a biometric system can be either a

verification (authentication) system an identification system. Verification involves

confirming or denying a person’s claimed identity. In identification one has to establish a

person’s identity. Identification systems based on biometrics are important building

blocks in simplifying our interaction with the myriad digital systems and devices that we

are all using in increasing numbers.

There are levels of security from the most basic to the most robust with biometrics

being the most secure:

Something that you have - such as an ID badge with a photograph on it.

Something that you know - such as a password or PIN number.

Something which you are - such as biometric data – fingerprints, iris, voice or

face scans.

Figure 1: Explains the meaning of definition

Biometrics is rapidly evolving technology, which is being used in forensics such

as criminal identification and prison security, and has the potential to be used in a large

range of civilian application areas. Biometrics can be used transactions conducted via

telephone and Internet (electronic commerce and electronic banking). In automobiles,

biometrics can replace keys with key -less entry devices.

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1.2 History:-

When we talk about biometric history, we would realize that since time

immemorial people always tried their best to use some way or the other so that they could

identify one person from another, whether it was through footprints or tattoos or

photos. Biometric history indicates that the science did not originate at a single place.

People all over the world were using the basics for mainly identifying individuals from

each other.

The ancient Egyptians and the Chinese played a large role in biometrics' history.

Although biometric technology seems to belong in the twenty-first century, the history of

biometrics goes back thousands of years. Possibly the most primary known instance of

biometrics in practice was a form of finger printing being used in China in the 14th

century, as reported by explorer Joao de Barros. Barros wrote that the Chinese merchants

were stamping children's palm prints and footprints on paper with ink so as to

differentiate the young children from one another. This is one of the most primitive

known cases of biometrics in use and is still being used today. 

Bertillon developed a technique of multiple body measurements which later got

named after him “Bertillonage”. His method was then used by police authorities

throughout the world, until it quickly faded when it was discovered that some people

shared the same measurements and based on the measurements alone, two people could

get treated as one.  After the failure of Bertillonage, the police started using finger

printing, which was developed by Richard Edward Henry of Scotland Yard, essentially

reverting to the same methods used by the Chinese for years.

Commercial advancements for biometric devices began in the 1970s when a

system called Identimat which measured the shape of the hand and length of the fingers

was used as part of a time clock at Shearson Hamill, a Wall Street investment firm.

Subsequently, hundreds of Identimat devices were used to establish identity for physical

access at secure facilities run by Western Electric, U.S. Naval Intelligence, the

Department of Energy, and U.S. Naval Intelligence and like organizations.

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Chapter 2

Block Diagram of Biometric System

Biometric devices consist of a reader or scanning device, software that converts

the gathered information into digital form, and a database that stores the biometric data

for comparison with previous records. When converting the biometric input, the software

identifies specific points of data as match points. The match points are processed using an

algorithm into a value that can be compared with biometric data in the database.

The biometric feature must have the following characteristics:-

(a) Universality, which means that every person should have the characteristic,

(b) Uniqueness, two persons should not have the same term or measurement of

Characteristic.

(c) Permanence, the characteristic should be invariant with time.

(d) Measurability, the characteristic can be quantified that is the origin of the Cameras

used in biometric systems are generally either CCD (charge couple device) or CMOS

(combined metal oxide semiconductor) image sensors. CCD is comparatively more costly

than CMOS.

Figure 2: Basic block diagram of biometrics system

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The main operations a system can perform are enrollment and test. During the

enrollment, biometric information from an individual is stored. During the test, biometric

information is detected and compared with the stored information. Note that it is crucial

that storage and retrieval of such systems themselves be secure if the biometric system is,

robust.

The first block (sensor) is the interface between the real world and the system; it

has to acquire all the necessary data. Most of the times it is an image acquisition system,

but it can change according to the characteristics desired. A sample of the biometric trait is

captured, processed by a computer, and stored for later comparison.

The second block performs all the necessary pre-processing: it has to remove

artifacts from the sensor, to enhance the input (e.g. removing background noise), to use

some kind of normalization, etc.

In the third block features needed are extracted. This step is an important step as

the correct features need to be extracted and the optimal way. A vector of numbers or an

image with particular properties is used to create a template. A template is a synthesis of

all the characteristics extracted from the source, in the optimal size to allow for adequate

identifiability. All Biometric authentications require comparing a registered or enrolled

biometric sample (biometric template or identifier) against a newly captured biometric

sample.

If enrollment is being performed where the biometric system identifies a person

from the entire enrolled population by searching a database for a match based solely on

the biometric. For example, an entire database can be searched to verify a person has not

applied for entitlement benefits under two different names. This is sometimes called

“one-to-many” matching.

If a verification phase is being performed, the biometric system authenticates a

person’s claimed identity from their previously enrolled pattern. This is also called “one-

to-one” matching. The obtained template is passed to a matcher that compares it with

other existing templates. The matching program will analyze the template with the input.

This will then be output for any specified use or purpose.

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Chapter 3

Classification of Biometrics

Biometrics encompasses both physiological and behavioral characteristics. A

physiological characteristic are related to the shape of a body. A relatively stable

physical feature such as finger print, hand geometry, iris pattern or facial features.

These factors are basically unalterable without trauma to the individual.

Behavioral tracts, on the other hand, are related to the behavior of a person. The

most common trait used in identification is a person’s signature. Other behaviors used

include a person’s keyboard typing, gait and speech patterns. Most of the behavioral

characteristics change over time.

Some of physical biometrics is

Fingerprint - analyzing fingertip patterns.

Facial Recognition - measuring facial characteristics.

Hand Geometry - measuring the shape of the hand.

Iris recognition - analyzing features of colored ring of the eye.

Some of behavioral biometrics is

Speaker Recognition - analyzing vocal behavior.

Signature Recognisation - analyze the physical activity of signing.

Gesture Recognisation - analyzing the motions of body.

3.1 Fingerprint:-

Humans have used fingerprints for personal identification for many centuries and

the matching accuracy using fingerprints has been shown to be very high. Fingerprinting

is probably the best-known biometric- method of identification used for 100 years. There

are a few variants of image capture technology available for such commercially oriented

fingerprint sensor, including optical, silicon, ultrasound, thermal and hybrid.

Among all the biometric techniques, fingerprint-based Identification is the oldest

method that has been successfully used in numerous applications. Everyone is known to

have unique, immutable fingerprints. A fingerprint is made of a series of ridges and

furrows on the surface of the finger as shown in the fig 3.1.1. The uniqueness of a

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fingerprint can be determined by the pattern of ridges and furrows as well as minutiae

points. Minutiae points are the local ridge characteristics that occur either at a ridge

ending or a ridge bifurcation. A ridge ending is defined as the point where the ridge ends

abruptly and the ridge bifurcation is the point where the ridge splits into two or more

branches.

When a user places their finger on the terminals scanner the image is

electronically read, analyzed, and compared with a previously recorded image of the same

finger which has been stored in the database. The imaging process is based on digital

holography, using an electro-optical scanner about the size of a thumbprint. The scanner

reads three-dimensional data from the finger such as skin undulations, and ridges and

valleys, to create a unique pattern that is composed into a template file.

Figure 3: Fingerprint classification of 6 categories (a) arch, (b) tented arch, (c) right loop,

(d) left loop, (e) whorl, and (f) twin loop

An algorithm is developed to classify fingerprints into five classes, namely, whorl,

right loop, arch and tented arch as shown in figure 3. Critical points in a finger print,

called core and delta are marked on one of the fingers as shown in figure 3 (c). The core

is the inner point, normally in the middle of the print, around which swirls, loops, or

arches center. It is frequently characterized by a ridge ending and several acutely curved

ridges. Deltas are the points, normally at the lower left and right hand of the fingerprint,

around which a triangular series of ridges center. The algorithm separates the number of

ridges present in four directions (o degree, 45 degree, 90 degree and 135 degree) by

filtering the central part of a fingerprint with a bank of Gabor filters. This information is

quantized to generate a finger code which is used for classification. To avoid fake-finger

attacks, some systems employ so-called liveness detection technology, which takes

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advantage of the sweat activity of human bodies. High-magnification lenses and special

illumination technologies capture the finger’s perspiration and pronounce the finger dead

or alive.

3.1.1 Advantages:-

Fingerprint recognition equipment is relatively low-priced compared to other

biometric system.

Fingerprints are unique to each finger of each individual and the ridge

arrangement remains permanent during one's lifetime.

3.1.2 Disadvantages:-

Some people have damaged or eliminated fingerprints.

Vulnerable to noise and distortion brought on by dirt and twists.

3.2 Face Recognisation:-

Face recognition technology analyze the unique shape, pattern and positioning of

the facial features. Face recognition is very complex technology and is largely software

based. Face recognition starts with a picture, attempting to find a person in the image.

This can be accomplished using several methods including movement, skin tones, or

blurred human shapes. The face recognition system locates the head and finally the eyes

of the individual. A matrix is then developed based on the characteristics of the

individual’s face. The method of defining the matrix varies according to the algorithm

(the mathematical process used by the computer to perform the comparison). This matrix

is then compared to matrices that are in a database and a similarity score is generated for

each comparison.

Despite the fact that there are more reliable biometric recognition techniques such

as fingerprint and iris recognition, these techniques are intrusive and their success

depends highly on user cooperation, since the user must position her eye in front of the

iris scanner or put her finger in the fingerprint device. On the other hand, face recognition

is non-intrusive since it is based on images recorded by a distant camera, and can be very

effective even if the user is not aware of the existence of the face recognition system. The

human face is undoubtedly the most common characteristic used by humans to recognize

other people and this is why personal identification based on facial images is considered

the friendliest among all biometrics.

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Face has certain distinguishable landmarks that are the peaks and valleys that sum

up the different facial features. There are about 80 peaks and valleys on a human face.

The following are a few of the peaks and valleys that are measured by the software:

Distance between eyes

Width of nose

Depth of eye sockets

Cheekbones

Jaw line

Chin

These peaks and valleys are measured to give a numerical code, a string of

numbers, which represents the face in a database. This code is called a face print. Face

recognition involves the comparison of a given face with other faces in a database with

the objective of deciding if the face matches any of the faces in that database.

Figure 4: Face nodal points

Image matching usually involves three steps:

1. Detection of the face in a complex background and localization of its exact

position,

2. Extraction of facial features such as eyes, nose, etc, followed by normalization to

align the face with the stored face images, and

3. Face classification or matching.

In addition, a face recognition system usually consists of the following four modules:

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1. Sensor module, which captures face images of an individual. Depending on the

sensor modality, the acquisition device maybe a black and white or color camera,

a 3D sensor capturing range (depth) data, or an infrared camera capturing infrared

images.

2. Face detection and feature extraction module. The acquired face images are first

scanned to detect the presence of faces and find their exact location and size. The

output of face detection is an image window containing only the face area.

Irrelevant information, such as background, hair, neck and shoulders, ears, etc are

discarded.

3. Classification module, in which the template extracted during step 2, is compared

against the stored templates in the database to generate matching scores, which

reveal how identical the faces in the probe and gallery images are. Then, a

decision-making module either confirms (verification) or establishes

(identification) the user’s identity based on the matching score. In case of face

verification, the matching score is compared to a predefined threshold and based

on the result of this comparison; the user is either accepted or rejected. In case of

face identification, a set of matching scores between the extracted template and

the templates of enrolled users is calculated. If the template of user X produces the

best score, then the unknown face is more similar to X, than any other person in

the database. To ensure that the unknown face is actually X and not an impostor,

the matching score is compared to a predefined threshold.

4. Sometimes, more than one template per enrolled user is stored in the gallery

database to account for different variations. Templates may also be updated over

time, mainly to cope with variations due to aging.

Face detection algorithms can be divided into three categories according to

1. Knowledge-based methods are based on human knowledge of the typical human

face geometry and facial features arrangement. Taking advantage of natural face

symmetry and the natural top-to-bottom and left-to-right order in which features

appear in the human face, these methods find rules to describe the shape, size,

texture and other characteristics of facial features (such as eyes, nose, chin,

eyebrows) and relationships between them (relative positions and distances). A

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hierarchical approach may be used, which examines the face at different

resolution levels. At higher levels, possible face candidates are found using a

rough description of face geometry. At lower levels, facial features are extracted

and an image region is identified as face or non-face based on predefined rules

about facial characteristics and their arrangement.

2. Feature invariant approaches aim to find structural features that exist even when

the viewpoint or lighting conditions vary and then use these to locate faces.

Different structural features are being used: facial local features, texture, and

shape and skin color. Local features such as eyes, eyebrows, nose, and mouth are

extracted using multi-resolution or derivative filters, edge detectors,

morphological operations or thresholding. Statistical models are then built to

describe their relationships and verify the existence of a face. Neural networks,

graph matching, and decision trees were also proposed to verify face candidates.

3. Template-based methods. To detect a face in a new image, first the head outline,

which is fairly consistently roughly elliptical, is detected using filters or edge

detectors. Then the contours of local facial features are extracted in the same way,

exploiting knowledge of face and feature geometry.

More recently, techniques that rely on 3D shape data have been proposed. 3D face

recognition is a modality of facial recognition methods in which the three-dimensional

geometry of the human face is used. 3D face recognition has the potential to achieve

better accuracy than its 2D counterpart by measuring geometry of rigid features on the

face. This avoids such pitfalls of 2D face recognition algorithms as change in lighting,

different facial expressions, make-up and head orientation. 

4.2.1 Advantages:-

No contact required.

Commonly available sensors (cameras).

4.2.2 Disadvantages:-

Face can be obstructed by hair, glasses, hats, scarves etc.

Difficult to distinguish between twins.

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Sensitive to changes in lighting, expression, and poses faces changeover time.

3.3 Hand Geometry:-

Hand geometry recognition systems are based on a number of measurements

taken from the human hand, including its shape, size of palm, and lengths and widths of

the fingers. The technique is very simple, relatively easy to use, and inexpensive.

Environmental factors such as dry weather or individual anomalies such as dry skin do

not appear to have any negative effects on the verification accuracy of hand geometry-

based systems. The geometry of the hand is not known to be very distinctive and hand

geometry based recognition systems cannot be scaled up for systems requiring

identification of an individual from a large population. Further, hand geometry

information may not be invariant during the growth period of children. In addition, an

individual's jewelry (e.g., rings) or limitations in dexterity (e.g., from arthritis), may pose

further challenges in extracting the correct hand geometry information. The physical size

of a hand geometry-based system is large, and it cannot be embedded in certain devices

like laptops.

Figure 5: Hand geometry system

3.3.1 Advantages:-

Easy to capture.

The major advantage is that most people can use it and as such, the acceptance

rate is good.

Believed to be a highly stable pattern over the adult lifespan.

3.3.2 Disadvantages:-

Use requires some training.

System requires a large amount of physical space.

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3.4 Iris Recognisation:-

The iris of each eye of each person is absolutely unique. In the entire human

population, no two irises are alike in their mathematical detail. This even applies to

identical twins. The iris of each eye is protected from the external environment. It is

clearly visible from a distance, making it ideal for a biometric solution. Image acquisition

for enrolment and recognition is easily accomplished and most importantly is non-

intrusive.

The Iris Code creation process starts with video-based image acquisition. This is a

purely passive process achieved using CCD (Charge Coupled Device) Video Cameras.

This image is then processed and encoded into an Iris Code record, which is stored in an

Iris Code database. This stored record is then used for identification in any live

transaction when an iris is presented for comparison.

Figure 6 : Iris scan process

The iris-scan process begins with a photograph. A specialized camera, typically

very close to the subject, no more than three feet, uses an infrared imager to illuminate the

eye and capture a very high-resolution photograph. This process takes only one to two

seconds and provides the details of the iris that are mapped, recorded and stored for future

matching/verification.

Eyeglasses and contact lenses present no problems to the quality of the image and

the iris-scan systems test for a live eye by checking for the normal continuous fluctuation

in pupil size.

The inner edge of the iris is located by an iris-scan algorithm which maps the iris

distinct patterns and characteristics. An algorithm is a series of directives that tell a

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biometric system how to interpret a specific problem. Algorithms have a number of steps

and are used by the biometric system to determine if a biometric sample and record is a

match.

Iris is composed before birth and, except in the event of an injury to the eyeball,

remains unchanged throughout an individual’s lifetime. Iris patterns are extremely

complex, carry an astonishing amount of information and have over 200 unique spots.

The fact that an individual’s right and left eyes are different and that patterns are easy to

capture, establishes iris-scan technology as one of the biometrics that is very resistant to

false matching and fraud.

The false acceptance rate for iris recognition systems is 1 in 1.2 million,

statistically better than the average fingerprint recognition system. The real benefit is in

the false-rejection rate, a measure of authenticated users who are rejected. Fingerprint

scanners have a 3 percent false-rejection rate, whereas iris scanning systems boast rates at

the 0 percent level.

3.4.1 Advantages:-

Iris recognition is very accurate with very low false acceptance rate

3.4.2 Disadvantages:-

Complex procedure.

High cost.

3.5 Speaker Recognition:-

Speaker, or voice, recognition is a biometric modality that uses an individual’s

voice for recognition purposes. The speaker recognition process relies on features

influenced by both the physical structure of an individual’s vocal tract and the behavioral

characteristics of the individual. A popular choice for remote authentication due to the

availability of devices for collecting speech samples and its ease of integration, speaker

recognition is different from some other biometric methods in that speech samples are

captured dynamically or over a period of time, such as a few seconds. Analysis occurs on

a model in which changes over time are monitored.

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Voice recognition technology utilizes the distinctive aspects of the voice to verify

the identity of individuals. Voice recognition is occasionally confused with speech

recognition, a technology which translates what a user is saying (a process unrelated to

authentication). Voice recognition technology, by contrast, verifies the identity of the

individual who is speaking. The two technologies are often bundled – speech recognition

is used to translate the spoken word into an account number, and voice recognition

verifies the vocal characteristics against those associated with this account. 

Voice recognition can utilize any audio capture device, including mobile and land

telephones and PC microphones. The performance of voice recognition systems can vary

according to the quality of the audio signal as well as variation between enrollment and

verification devices, so acquisition normally takes place on a device likely to be used for

future verification. During enrollment an individual is prompted to select a passphrase or

to repeat a sequence of numbers. Voice recognition can function as a reliable

authentication mechanism for automated telephone systems, adding security to automated

telephone-based transactions in areas such as financial services and health care.  Certain

voice recognition technologies are highly resistant to imposter attacks, means that voice

recognition can be used to protect reasonably high-value transactions.   

Figure 7: Voice Sample

Speech samples are waveforms with time on the horizontal axis and loudness on

the vertical access. The speaker recognition system analyzes the frequency content of the

speech and compares characteristics such as the quality, duration, intensity dynamics, and

pitch of the signal.

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Voice recognition techniques can be divided into categories depending on the type

of authentication domain.

• Fixed text method is a technique where the speaker is required to say a predetermined

word that is recorded during registration on the system.

• In the text dependent method the system prompts the user to say a specific word or

phrase, which is then computed on the basis of the user’s fundamental voice pattern.

• The text independent method is an advanced technique where the user need not

articulate any specific word or phrase. The matching is done by the system on the basis of

the fundamental voice patterns irrespective of the language and the text used.

3.5.1 Advantages:-

Simple and cost-effective technological application.

Can be used for remote authentication.

3.5.2 Disadvantages:-

Voice and language usage change over time (e.g. as a result of age or illness).

3.6 Signature Recognisation:-

Biometric signature recognition systems measure and analyze the physical activity

of signing. Important characteristics include stroke order, the pressure applied, the pen-up

movements, the angle the pen is held, the time taken to sign, the velocity and acceleration

of the signature. Some systems additionally compare the visual image of signatures,

though the focus in signature biometrics lies on writer-specific information rather than

visual handwritten content. While it may appear trivial to copy the appearance of a

signature, it is difficult to mimic the process and behavior of signing.

Figure 8: Signature trait

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Signature data can be captured via pens that incorporate sensors or through touch-

sensitive surfaces which sense the unique signature characteristics. Touch-sensitive

surfaces are increasingly being used on ICT devices such as screens, pads, mobile phones,

laptops and tablet PCs.

3.6.1 Advantages:-

Main uses of signature biometrics include limiting access to restricted documents

and contracts, delivery acknowledgement and banking/finance related

applications.

3.6.2 Disadvantages:-

A person’s signature changes over time as well as under physical and emotional

influences.

3.7 Gesture Recognisation System:-

Gesture is the use of motions of the limbs or body as a means of expression,

communicate an intention or feeling. Gesture recognition enables humans to interface

with the machine (HMI) and interact naturally without any mechanical devices. Using the

concept of gesture recognition, it is possible to point a finger at the computer screen so

that the cursor will move accordingly. This could potentially make conventional input

devices such as mouse, keyboards and even touch-screens redundant. The ability to track

a person's movements and determine what gestures they may be performing can be

achieved through various tools. Although there is a large amount of research done in

image/video based gesture recognition, there is some variation within the tools and

environments used between implementations. In order to capture human gestures by

visual sensors, robust computer vision methods are also required, for example for hand

tracking and hand posture recognition or for capturing movements of the head, facial

expressions or gaze direction. The input devices of gesture recognisation system are

Depth-aware cameras: Using specialized cameras such as time-of-flight

cameras, one can generate a depth map of what is being seen through the camera

at a short range, and use this data to approximate a 3d representation of what is

being seen. These can be effective for detection of hand gestures due to their short

range capabilities.

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Stereo cameras: Using two cameras whose relations to one another are known, a

3d representation can be approximated by the output of the cameras. To get the

cameras' relations, one can use a positioning reference such as

an infrared emitters.

Controller-based gestures: These controllers act as an extension of the body so

that when gestures are performed, some of their motion can be conveniently

captured by software. Mouse gestures are one such example

Single camera: A normal camera can be used for gesture recognition where the

resources/environment would not be convenient for other forms of image-based

recognition. Although not necessarily as effective as stereo or depth aware

cameras, using a single camera allows a greater possibility of accessibility to a

wider audience.

4.8.1 Advantages:-

A new interactive Technology.

Eliminates the use of mechanical devices.

4.8.2 Disadvantages:-

Complex

High costs

3.8 Multimodal Biometrics System:-

Multimodal biometric systems are those that utilize more than one physiological

or behavioral characteristic for enrollment, verification, or identification. A biometric

system which relies only on a single biometric identifier in making a personal

identifications often not able to meet the desired performance requirements. Identification

based on multiple biometrics represents on emerging trend. A multimodal

biometric system is introduced which integrates face recognition, fingerprint

verification, and speaker verification in making a personal identification. This system

takes advantage of the capabilities of each individual biometric. It can be used to

overcome some of the limitations of a single biometrics.

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Chapter 4

System Accuracy and Comparison

4.1 System Accuracy:-

Accuracy or performance of biometric systems is measured with three factors:

1. False acceptance rate (FAR)

2. False rejection rate (FRR)

3. Equal Error Rate (EER)

1. False Acceptance Rate:-

False acceptance rate is also known as Type I error. It measures the percentage of

impostors being incorrectly accepted as genuine user. Since almost all biometric systems

aim to achieve correct identity authentication, this number should be as low as possible.

2. False Rejection Rate:-

False rejection rate is also known as Type II error, this measures the percentage of

genuine users being incorrectly rejected. In order to minimize inconveniences (or

embarrassment) to the genuine user, this number should also be low.

3. Equal Error Rate:-

FAR and FRR are inversely related and a consolidation of the FAR and FFR is the

point at which accept and reject errors are equal. This is described as the equal error rate

(EER), sometimes also known as the cross-over error rate (CER). Low EER scores

generally indicate high levels of accuracy. This is illustrated in Figure 9. FAR and FFR

can often be adjusted by changing system parameters (rejection thresholds) or better

control of conditions under which systems are used (dust free, good lighting and so on).

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Figure 9: System Accuracy Curve

4.2 Comparison of Biometric Technologies:-

Biometrics Universa

lity

Unique

ness

Permane

nce

Collectabil

ity

Performan

ce

Acceptabil

ity

Circumve

ntion

Fingerprint M H H M H M H

Face H L M H L H L

Hand geometry

M M M H M M M

Iris H H H M H L H

Voice M L L M L H L

H-High, M-Medium-Low

Table 1: Comparison of Biometrics Technology

In the above table, universality indicates how common the biometric is found in

each person; uniqueness indicates how well the biometric separates one person from the

other; permanence indicates how well the biometric resist the effect of aging; while

collectability measures how easy it is to acquire the biometric for processing.

Performance indicates the achievable accuracy, speed and robustness of the biometrics

while acceptability indicates the degree of acceptance of the technology by the public in

their daily life and circumvention indicates the level of difficulty to circumvent or fool the

system into accepting an impostor.

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Chapter 5

APPLICATIONS

5.1 Eye Gaze System:-

The Eye gaze Edge uses the pupil-center/corneal-reflection method to determine

where the user is looking on the screen. An infrared-sensitive video camera, mounted

beneath the System's screen, takes 60 pictures per second of the user's eye. A low power,

infrared light emitting diode (LED), mounted in the center of the camera's lens illuminates

the eye. The LED reflects a small bit of light off the surface of the eye's cornea. The light

also shines through the pupil and reflects off of the retina, the back surface of the eye, and

causes the pupil to appear white. The bright-pupil effect enhances the camera's image of the

pupil so the system's image processing functions can locate the center of the pupil.

The Edge calculates the person's gaze point, i.e., the coordinates of where he is looking on

the screen, based on the relative positions of the pupil center and corneal reflection within

the video image of the eye. Typically the Eye gaze Edge predicts the gaze point with an

average accuracy of a quarter inch or better. Prior to operating the eye tracking applications,

the Eye gaze Edge must learn several physiological properties of a user's eye in order to be

able to project his gaze point accurately. The system learns these properties by performing a

Figure 10: Display Panel of Eye-gazed System

calibration procedure. The user calibrates the system by fixing his gaze on a small circle

displayed on the screen, and following it as it moves around the screen. The calibration

procedure usually takes about 15 seconds, and the user does not need to recalibrate if he

moves away from the Eye gaze Edge and returns later. A user operates the Eye gaze System

by looking at rectangular keys that are displayed on the control screen.  To "press" an Eye

gaze key, the user looks at the key for a specified period of time.  The gaze duration required

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to visually activate a key, typically a fraction of a second, is adjustable.  An array of menu

keys and exit keys allow the user to navigate around the Eye gaze programs independently.

5.2 Television Controlled by Hand Gestures:-

Hitachi launched a high-end TV panel working with the Canesta 3D sensor, which

allows viewers interact with the TV controls via hand gestures. While the TV

displays 3D images we can wave our hand to power up the TV or move our hand circularly

to change the channel. Canesta’s 3D sensor is immune to lighting extremes and works in

any environment, whether it is indoors or outdoors, with the condition that we have to be

within the 3-meter working range. It also distinguished between one hand and two hands

and offers multiple commands depending on your hand’s motion. As we move our hands,

the 3D sensor developed with CMOS chip technology sends a stream of 3D data at 30

frames per second to the TVs micro-controller, where the gesture-recognition software

translates the depth maps into gestures and then into commands.

5.3 Mimi Switch:-

Mimi switch uses infrared sensors to measure movements inside the ear, which are

triggered by various facial expressions, and then transmits signals to a micro-computer that

controls electronic devices. It’s pretty much a hands-free remote control for anything

electronic. It stores and can even interpret data, allowing it to customize itself to individual

users, if it judges that we aren’t smiling enough, it may play a cheerful song.” In addition to

its usefulness in controlling music devices or cell phones, it can also be used as a safety

measure, providing hearing aids for the elderly, or health monitors: It could measure, say,

how often someone sneezes, and if it senses a serious health problem, it could send a

warning message to relatives.

5.4 Controller Free Gaming:-

Project Natal is the code name for a "controller-free gaming and entertainment

experience" by Microsoft for the Xbox 360 video game platform. Project Natal enables

users to control and interact with the Xbox 360 without the need to touch a game

controller through a natural user interface using gestures, spoken commands or presented

objects and images. The depth sensor consists of an infrared projector combined with a

monochrome CMOS sensor, and allows the Project Natal sensor to see in 3D under

any ambient light conditions. The sensing range of the depth sensor is adjustable, with the

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Project Natal software capable of automatically calibrating the sensor based on game play

and the player's physical environment, such as the presence of chairs.

Project Natal is likely based on software technology developed internally by

Microsoft and 3D camera technology by Israeli developer Prime Sense, which interprets

3D scene information from a continuous infrared pattern. It was initially reported that the

hardware was acquired from time-of-flight camera  developer 3DV Systems.   Project

Natal enables advanced gesture recognition, facial recognition, and voice

recognition. The skeletal mapping technology was capable of simultaneously tracking up

to four users for motion analysis with a feature extraction of 48 skeletal points on a

human body at a frame rate of 30hertz. Depending on the person's distance from the

sensor, Project Natal is capable of tracking models that can identify individual fingers.

Figure 11: Project Natal by Microsoft

Biometrics is basically used in door lock systems and can be used to prevent

unauthorized access to ATMs, cellular phones, desktop PCs. It has largely used in access

control and identity verifications, including time and attendance

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Conclusion and Future Works

Conclusion:-

Biometric is an emerging area with many opportunities for growth. Biometrics is

widely being used because of its user friendliness, flexibility in specifying required

security level and long term stability. The technology will continue to improve and

challenges such as interoperability solved through standardization. This will lead to

increase in the market adoption rate and the technology will proliferate. Possibly in the

near future, you will not have to remember PINs and passwords and keys in your bags or

pockets will be things of the past.

Future works:-

The future of biometrics holds great promise for law enforcement applications, as well

for private industry uses. Biometrics’ future will include e-commerce applications for extra

security on the checkout page, and biometrics will guard against unauthorized access to cars

and cell phones. In the future, biometric technology will further develop 3-D infrared facial

recognition access control, real-time facial recognition passive surveillance, and visitor

management authentication systems. Already A4Vision, a provider of 3-D facial scanning and

identification software uses specialized algorithms to interpret the traditional 2-D camera

image and transfer it into a 3-D representation of a registered face. This makes it almost

impossible to deceive the biometric system with still photos or other images. Strengthening

existing biometric innovations for future growth all of these security innovations will make

biometric technology more accurate and make its usage more widespread.

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References:-

1. S. Prabhakar, S. Pankanti, and A. K. Jain, “Biometric Recognition: Security and Privacy Concerns”, IEEE Security and Privacy Magazine, Vol. 1, No. 2, pp. 33-42, 2003.

2. Jain, A. K.; Ross, Arun; Prabhakar, Salil (January 2004), "An introduction to biometric recognition", IEEE Transactions on Circuits and Systems for Video Technology 14th (1): 4–20, doi:10.1109/TCSVT.2003.818349

3. N. K. Ratha, J. H. Connell, and R. M. Bolle, "Enhancing security and privacy in biometrics-based authentication systems," IBM systems Journal, vol. 40, pp. 614-634, 2001.

4. A. Jain et al: BIOMETRICS: Personal Identification in NetworkedSociety, Kluwer Academic Publishers, 1999, ISBN0-7923-8345-1.

5. M.Pantic and L.J.M. Rothkrantz, 'Towards an Affect-Sensitive Multimodal Human-Computer Interaction '. In: Proceedings of the IEEE, vol. 91, no. 9, pp. 1370-1390, September 2003

6. A. Mehrabian, “Communication without words,” Psychol. Today, vol. 2, no. 4, pp. 53–56, 1968.

7. Jain, A., Bolle, R. and Pankanti S. (1999). BIOMETRICS: Personal Identification in Networked Society. Kluwer Academic Publishers.

8. http:// www.biometrics.org/

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