FINGER VEIN VERIFICATION TECHNOLOGY FOR
MOBILE APPARATUS
Hideo Sato
FVA Business Department, Sony Corporation, Japan
Keywords: Biometrics, Finger vein, Authentication, Mobile devices, Forge resistance.
Abstract: In this paper we present a new finger vein authentication technology for consumer mobile products. The
finger vein patterns are unique for each individual and do not change over a long time. Since finger veins
exist inside of the body, it is extremely hard to be forged. Very short response time while keeping high-level
security authentication is achieved by the new compact-fast-matching scheme and small-size template. The
data size is nearly as small as the one of the minutiae-based fingerprint authentication systems. The compact
sensor size is realized by the method of reflecting scattering light. These technologies enable the use of
finger vein authentication to the mobile devices and smart cards.
1 INTRODUCTION
Biometrics is expected to become more important as
the core technology for mobile network security. In
spite of such expectations, a lot of issues on the
biometrics are pointed out (Virginia Ruiz-Albacete
et al., 2008, Tsutomu Matsumoto et al., 2002). It is
also standardized for example in ISO and JIS (ISO-
standard on vein, JIS (JP) standard on vein).
Especially following issues need to be improved for
mobile usage of biometrics.
•Forge resistance
The fake physical biometric is serious problem.
Actually fake fingerprint was used to trick biometric
airport fingerprint scan. Latent fingerprint is another
issue (Tsutomu Matsumoto et al., 2002). When you
lost your mobile phone, your fingerprint patterns
remain on the surface and it can be used for forge.
•Disability to enrol some users
All the people should be able to use the biometrics
system. About 4% of the population have poor
quality of fingerprint, especially the elder people and
manual worker (Privacy International, 2005). For
these cases one need to consider other biometrics or
password service.
•Environmentally free
Finger print authentication is affected by skin
condition (dry or wet). Dry skin cause the increase
of the false rejection rate in winter season.
•Limited resource environments
The authentication algorithm should be designed to
be small, efficient, and use resources efficiently for
operating on the resource-limited devices. A very
good performance is necessary to achieve a
comfortable authentication. Of course, small size
low cost sensor is must issue for mobile use.
Finger vein authentication technology is expected to
be more secure, reliable than current biometric
systems. However, the usage has been still limited
due to the above issues to be cleared. The purpose of
our development is to improve the actual
performance of the finger vein authentication for
mobile usage. It is necessary to resolve the following
two major issues for wider and practical use.
The first issue is the improvement of the sensor size.
This is a problem concerning the biometric sensor
device and the image processing.
The second issue is the efficient authentication
scheme for mobile usage. This needs improvements
the authentication algorithm. It is also related to the
data size of the biometric template.
37
Sato H. (2009).
FINGER VEIN VERIFICATION TECHNOLOGY FOR MOBILE APPARATUS.
In Proceedings of the International Conference on Security and Cryptography, pages 37-41
DOI: 10.5220/0002231300370041
Copyright
c
SciTePress
2 VEIN PATTERN
AUTHENTICATION
Finger vein authentication is expected to be a new
technology that replaces the fingerprint. Like irises
and fingerprints, a person's veins are completely
unique. Even twins don't have identical veins, and
each person's veins differ between their left and right
sides. Furthermore veins are not visible usually since
they are covered by the skin, making them extremely
difficult to be counterfeited or tampered. The pattern
also changes very little as a person ages.
The advantages on finger vein authentication in
comparison with other biometrics and listed as
follows;
•Advantages
(1) Robustness
As veins are hidden inside the body, there is little
risk of forgery or theft.
(2) High accuracy
The authentication accuracy is less than 0.1% for the
FRR (False Rejection Rate), less than 0.0001% for
the FAR (False Acceptance Rate).
(3) Very good performance on Failure to Enrol Rate
(FTE)
FTE of the finger vein authentication is nearly equal
to 0%. All the people can use this method.
(*Finger Print = 4%)
(4) Dependence of the surface conditions of the
fingers
The surface conditions of the hands have no effect
on authentication.
It is already used for biometrics ATM cards in
Japan. This shows the trust to vein authentication
technologies by banking field.
•Issues in the past technologies
On the other hand, some weak points of a past vein
technology still remain to be resolved compared
with the fingerprint.
(1) Size of device
It is too large for mobile apparatus.
(2) Authentication speed
It is slower than a general fingerprint
authentication.
(3) Need the guide to fix hand or finger
All of vein sensors used the assistance of finger or
hand guide. Steady and stable operations are
difficult without it. This is not practical for the use
of mobile environment.
(4) High cost of sensor
It is too expensive for the cellular phone.
(5) Data size
The data size of the template needs to make is
very small.
It is necessary to improve these issues for vein
technologies to be used widely in the mobile area.
3 THE PROPOSED FINGER VEIN
TECHNOLOGY
3.1 Biometric sensor
The first issue is the improvement of the sensor size.
•Open Type Capability
Generally other vein authentication systems such as
palms and back of the hands use the reflection of the
body. On the other hand, as near-infrared light is
transmitted through the finger, and strongly scattered
in the inside of the body, it is difficult to capture the
finger vein image by this method. Small finger veins
are masked by the reflection light of the epidermis.
Finger vein are much smaller than other vein such as
palms and back of the hands. It is more difficult to
forge the finger vein patterns than other portions.
This is a big advantage of finger vein. On the other
hand, we had to use the transmission type optical
system for the finger vein image usually. This is the
reason why the size of sensor device is large.
Figure 1: The reflecting scattering light method.
•The reflecting scattering light method
We developed a new finger vein sensor by the
reflecting scattering light method as shown in Figure
1. This uses the scattering light in the inside of
finger. The LED array emits near-infrared light, and
it is strongly diffused. By the deep investigation of
these characteristics we developed a new structure of
SECRYPT 2009 - International Conference on Security and Cryptography
38
the vein scanner for finger. This method can be
achieved only by lighting from the direction of
single side, which enabled open type's sensor.
It shows the relation between the sensor and LED
unit. For transmission type, the angle is 180 degrees.
The angle between camera and incident light affect
the image quality of vein. The maximum efficiency
and the image quality are obtained by about 120
degrees through investigation. The influence of the
image of the dermis and the epidermis appears by
about 90 degrees, and the vein image quality is
deteriorated. It increases the failure to enrol rate
(FTE).This method (about 120 degrees) can obtain
the high performance equal with a transmission type.
3.2 Feature Extraction Algorithm for
Vein Blood Flow
•Noise Removal
Conventionally CCD sensor is used for vein
authentication systems. CMOS sensor is one of the
solutions for cost saving and size down. CMOS
Image sensors are widely used by cellular phone
because of low cost and low power. But there are
some shortcomings for using CMOS small sensor
for finger vein authentication. The disadvantage of
CMOS imagers is the noise of the image. We
analyzed the characteristics of this noise and tested
various kind of noise filter. Based on these
investigations, we developed noise reduction
algorithm for finger vein image. This enabled to use
low cost and small size CMOS sensor whish has the
same performance as CCD sensor for finger vein
authentication.
•The extraction algorithm for vein patterns
It is possible to classify it into two types roughly
though there are various techniques in the extraction
algorithm for vein patterns.
Type1. Path search algorithms
Type2. Zero crossing methods
There is a report on Type 1 with the line tracking
method for vein pattern (Naoto Miura et al., 2005).
Our technology is based on Type2.
The zero-crossing method is known as a method that
is appropriate for such a pattern extraction. The
Laplacian filter is one of the generalized method for
zero- crossing detection. It is defined as follows.
L(I) = Ixx + Iyy (1)
However, because the character of the vein image is
greatly different according to the race, sex, the age,
and the health condition it was very difficult to
achieve a steady vein pattern extraction by this
method.
We resolved this problem by developing a new filter
with special characteristics that is appropriate for the
vein image noise and the vein continuous patterns. It
has higher-speed than Path search algorithms.
•Centreline detecting of the vein
This method improves the robustness for the
variation of the climate and the health condition.
Figure 2: The change of the vein width.
It is said that the vein patterns changes very little as
a person ages. But it does not mean the vein itself
will not change in any case. Actually the thickness
of vein changes by the physical condition, climate,
and temperature. This two pictures show the change
of the vein width by the height of hand to heart (See
the Figure 2).
Our approach extracts the centreline of the vein
accurately (see Figure 3). This method improves
stability enormously by removing such uncertainties.
Furthermore, this approach is very fast and very
compact.
Figure 3: Feature Extraction Approach.
FINGER VEIN VERIFICATION TECHNOLOGY FOR MOBILE APPARATUS
39
3.3 New Compact-fast-matching
Algorithm
Another issue is the comfortable authentication
algorithm for mobile usage.
Conventionally it is necessary to use a guide place it
accurately. It is quite difficult to install the finger
guide used for ATM in mobile use.
And it cannot be expected from the user to a certain
forced adjustment on finger position.
Figure 4: New compact-fast-matching scheme.
The common problem of the vein pattern recognition
is repeatability of the taking picture images using the
camera. On the other hand, the algorithm
corresponding to the change including the zooming
and the rotation generally requires big calculation
power. This is a reason why conventional vein
authentication systems need the assistance of finger
or hand guide (BioGuard 2008, Chris Roberts 2006).
In our device, it is enough only by the correction of
a little rotation and a little zooming. We developed a
new match method to correct these errors on polar
coordinates as shown in Figure 4. The shortcoming
of the conventional finger guide was resolved by our
approach of combining the match in the direction of
X-Y and the match in polar coordinates. The rotation
axially of the finger is corrected by the selection
from three templates or more.
The purpose of this approach is to improve the
convenience of the finger vein authentication. Our
approach resolves these uncertainties of height, the
rotation, the angle, and the distance. An efficient
authentication was achieved without a special guide
of the finger by this approach. The test environment
and the result are shown in Table 1 as follows.
Table 1: The performance of the algorithm.
Example column 1 Average operation time
Windows PC 15ms
The authentication performance of this algorithm
was tested by the reference finger vein sensor by the
reflecting scattering light method.
The result is also shown in the following Table 2.
Table 2: FAR and FRR of new algorithm.
Test item FAR ( % ) FRR ( % )
performance 0.0001 0. 1
3.4 Vein Pattern Data Compression
with Accuracy
Our compression scheme transforms shown in
Figure 5 vein pattern into geometric Information. It
compresses the centre lined data of the vein with
accuracy compensation as small as to 112Byte. This
data size is nearly equal to one of the minutiae-based
fingerprint authentication systems. The small size
template is suitable for smart card storing and
mobile phone. It achieves quick authentication
operation.
Figure 5: Vein Pattern Data Compression.
4 PROTOTYPE PHONE
We made the prototype for cellular phone. This
prototype phone adopted the reflecting scattering
light method for the vein sensor. New approach is
coded in C language and suitable for mobile OS. We
investigated the performance of the combination of
new sensor and algorithm, under mobile
environments. The following are the results in the
enrolment and verification of 100 people. This
actual test was as shown in Table 1 shows the
SECRYPT 2009 - International Conference on Security and Cryptography
40
comfortableness and without any failure. Although
this data is not enough estimating the FTE, FAR and
FRR, yet it shows practicality for mobile usage.
Table 3: The results in the enrolment and verification.
Test item False number Test number
Enrolment
0 100
False Acceptance 0 2000
False Rejection 0 2000
The prototype for cellular phone structure is
explained in Figure 6. The Infra-red LED Unit is
placed at the head of display and sensor is at the
bottom of display. Finger vein authentication
software runs on the OS of cellular phone. The
distance between sensor and finger is about 60mm.
The stability of the authentication performance
depends on this enough distance. It is necessary for
the steady reproducibility of the finger vein image.
Figure 6: The image of Prototype Phone.
The average time of authentication is 250ms with
ARM CPU (150MHz) as shown in Table 4. It
achieved higher speed than a general fingerprint
authentication of a cellular phone.
Table 4: The average time of authentication.
Example column 1 Average time
Mobile Phone
@ARM9 150MHz
250ms
5 CONCLUSIONS
In this paper, we focus on our achievement of our
newly developed finger vein authentication
technologies. The sensor size is improved by the
reflecting of scattering light and the new feature
extraction scheme. By the well combination of these
technologies we realized the use of the low cost
small sized CMOS sensor for the finger vein
authentication. Furthermore, the new compact-fast-
matching and compression scheme contribute to the
efficient authentication. This new Finger vein
technology is expected to be the promising
technology which can improve the shortcomings of
the fingerprint. We expect that our new technologies
will expand the application range of the vein pattern
recognition, especially for mobile usage.
REFERENCES
Virginia Ruiz-Albacete, Pedro Tome-Gonzalez, Fernando
Alonso-Fernandez, Javier Globally, Julian Fierrez, and
Javier Ortega-Garcia 2008, Direct attacks using fake
images in iris verification
Tsutomu Matsumoto, Hiroyuki Matsumoto, Koji Yamada,
Satoshi Hoshino, 2002. Impact of Artificial "Gummy"
Fingers on Fingerprint Systems
Privacy International, 2005, UK Identity Cards and Social
Exclusion
Naoto Miura, Akio Nagasaka, Takafumi Miyatake
2005.Extraction of Finger-Vein Patterns Using
Maximum Curvature Points in Image Profiles
(Hitachi)
BioGuard 2008. Palm Vein Authentication Technology
Chris Roberts 2006, Biometric Technologies - Palm and
Hand
ISO-standard on vein. Biometric data interchange formats
- Part 9: Vascular image data (ISO/IEC 19794-9).
Conformance testing methodology for biometric data
interchange formats - Part 9: Vascular image data
(ISO/IEC 29109-9)
JIS (JP) standard on vein. Evaluation Method for
Accuracy of Vein Authentication Systems (JIS-TR
X0079)
FINGER VEIN VERIFICATION TECHNOLOGY FOR MOBILE APPARATUS
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