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Fingerprint Recognition

Fingerprint Recognition. Fingerprint recognition is one of the oldest and most researched fields of biometrics. Some biological principles (Moenssens 1971) related to fingerprint recognition are as follows:

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Fingerprint Recognition

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  1. Fingerprint Recognition • Fingerprint recognition is one of the oldest and most • researched fields of biometrics. • Some biological principles (Moenssens 1971) related • to fingerprint recognition are as follows: • Individual epidermal ridges and furrows have different characteristics for different fingerprints. • This forms the foundation of fingerprint recognition • The configuration types are individually variable; but they vary within limits that allow for a systematic classification. • Herein lies the basis for fingerprint classification. • The configuration and minute details of furrows are permanent and unchanging.

  2. Fingerprint Formation • Fingerprints are fully formed at about seven months of fetus development and finger ridge configurations do not change throughout the life of an individual except due to accidents such as bruises and cuts on the fingertips (Babler, 1991). • Unrelated persons of the same race have very little generic similarity in their fingerprints. • Parent and child have some generic similarity as they share half the genes. • Siblings have more similarity. • The maximum generic similarity is observed in monozygotic (identical) twins.

  3. Fingerprint Sensors

  4. Fingerprint Sensors • Optical • Silicon Based Capacitive Sensors • Ultrasound • Thermal

  5. Optical Sensors • Oldest and most widely used technology. • Majority of companies use optical technology. • The finger is placed on a coated hard plastic plate. • In most devices, a charged coupled device (CCD) converts the image of the fingerprint, with dark ridges and light valleys, into a digital signal. • The brightness is either adjusted automatically or manually, leading to a usable image.

  6. Optical Sensors-contd.. Advantages • They are the most proven over time. • They can withstand, to some degree, temperature fluctuations. • They are fairly inexpensive. • They can provide resolutions up to 500 dpi. Disadvantages • Size, the sensing plate must be of sufficient size to achieve a quality image • Residual prints from previous users can cause image degradation, as severe latent prints can cause two sets of prints to be superimposed. • The coating and CCD arrays can wear with age, reducing accuracy. • A large number of vendors of fingerprint sensing equipment are gradually shifting towards silicon-based technology.

  7. Silicon Based Sensors • Silicon technology has gained considerable acceptance since its introduction in the late 90's. • Most silicon, or chip, technology is based on DC Capacitance, but some also use AC Capacitance. • The silicon sensor acts as one plate of a capacitor, and the finger is the other. • The capacitance between the sensing plate and the finger is converted into an 8-bit grayscale digital image.

  8. Silicon Based Sensors-contd.. • Fingerprint cards contain numerous capacitive plates which measure the capacitance between the plates and the fingertip. • When the finger is placed on the sensor extremely weak electrical charges are created, building a pattern between the finger's ridges or valleys and the sensor's plates. • Using these charges the sensor measures the capacitance pattern across the surface. • The measured values are digitized by the sensor then sent to the neighboring microprocessor. • This can be done directly by applying an electrical charge to the plate or by using electronic pulses passed to the fingertip.

  9. Direct v/s Active Capacitive Measurement

  10. Silicon Based Sensors-contd.. Advantages • The Silicon chip comprises of about 200*200 lines on a wafer the size of 1cm*1.5cm, thus providing a pretty good resolution for the image. • Hence, Silicon generally produces better image quality, with less surface area, than optical. • Also, the reduced size of the chip means lower costs especially with the dropping costs in Silicon chip manufacturing. • Miniaturization of Silicon chips also makes it possible for the chips to be integrated into numerous devices. Disadvantages • In spite of claims by manufacturers that Silicon is much more durable than optical, Silicon's durability, especially in sub-optimal conditions, has yet to be proven. • Also, with the reduction in sensor size, it is even more important to ensure that enrolment and verification are done carefully.

  11. Ultrasound Sensors • Ultrasound technology is perhaps the most accurate of the fingerprint technologies. • It uses transmitted ultrasound waves and measures the distance based on the impedance of the finger, the plate, and air. • Preliminary usage of products indicates that this is a technology with significant promise.

  12. Ultrasound Sensors-contd.. Advantages • Ultrasound is capable of penetrating dirt and residue on the sensing plate and the finger. • This overcomes the drawbacks of optical devices which can't make that distinction. • It combines a strength of optical technology-large platen size and ease of use, with a strength of silicon technology-the ability to overcome sub-optimal reading conditions. • It is also virtually impossible to deceive an ultrasound system. Disadvantages • The quality of the image depends to a great extent on the contact between the finger and the sensor plate which could also be quite hot.

  13. Thermal Sensors • Uses Pyro Electric material. • Pyro-electric material is able to convert a difference in temperature into a specific voltage. • This effect is quite large, and is used in infrared cameras. • A thermal fingerprint sensor based on this material measures the temperature differential between the sensor pixels that are in contact with the ridges and those under the valleys, that are not in contact.

  14. Thermal Sensors-contd.. Advantages • A strong immunity to electrostatic discharge • Thermal imaging functions as well in extreme temperature conditions as at room temperature. • It is almost impossible to deceive with artificial fingertips. Disadvantages • A disadvantage of the thermal technique is that the image disappears quickly. • When a finger is placed on the sensor, initially there is a big difference in temperature, and therefore a signal, but after a short period (less than a tenth of a second), the image vanishes because the finger and the pixel array have reached thermal equilibrium. • However, this can be avoided by using a scanning method where the finger is scanned across the sensor which is the same width as the image to be obtained , but only a few pixels high.

  15. Fingerprint Classification Whorl Right Loop Left Loop Tented Arch Arch • Classification of Fingerprints • Large volumes of fingerprints are being collected in everyday applications-for e.g.. The FBI database has 70 million of them. • To reduce the search time and computational complexity classification is necessary. • This allows matching of fingerprints to only a subset of those in the database. • An input fingerprint is first matched at a coarse level to one of the pre-specified types and then, at a finer level, it is compared to the subset of the database containing that type of fingerprints only. • Numerous algorithms have been developed in this direction.

  16. Line Types Classification Bifurcation: It is the intersection of two or more line-types which converge or diverge. Arch: They are found in most patterns, fingerprints made up primarily of them are called “Arch Prints”. Loop: A recursive line-type that enters and leaves from the same side of the fingerprint. Island: A line-type that stands alone.( i.e. does not touch another line-type) Ellipse:A circular or oval shaped line-type which is generally found in the center of the fingerprint, it is generally found in the Whorl print pattern. Tented Arch: It quickly rises and falls at a steep angle. They are associated with “Tented Arch Prints”. Spiral: They spiral out from the center and are generally associated with “Whorl Prints”. Rod: It generally forms a straight line. It has little or no recurve feature. They are gennerally found in the center. Sweat Gland: The moisture and oils they produce actually allow the fingerprint to be electronically imaged.

  17. Automatic Verification System

  18. Feature Extraction • The human fingerprint is comprised of various types of ridge patterns. • Traditionally classified according to the decades-old Henry system: left loop, right loop, arch, whorl, and tented arch. • Loops make up nearly 2/3 of all fingerprints, whorls are nearly 1/3, and perhaps 5-10% are arches. • These classifications are relevant in many large-scale forensic applications, but are rarely used in biometric authentication.

  19. Feature Enhancement • The first step is to obtain a clear image of the fingerprint. • Enhancement is carried out so as to improve the clarity of ridge and furrow structures of input fingerprint images based on the estimated local ridge orientation and frequency. • For grayscale images, areas lighter than a particular threshold are discarded, and those darker are made black. • The ridges are then thinned from 5-8 pixels in width down to one pixel, for precise location of endings and bifurcations. Enhanced Original

  20. Feature Extraction-contd.. • Minutiae localization is the next step. • Even a very precise image has distortions and false minutiae that need to be filtered out. (e.g. search and eliminate one of two adjacent minutiae) • Anomalies caused by scars, sweat, or dirt appear as false minutiae, and algorithms locate any points or patterns that don't make sense, such as a spur on an island (probably false) or a ridge crossing perpendicular to 2-3 others (probably a scar or dirt). • A large percentage of would-be minutiae are discarded in this process. • The point at which a ridge ends, and the point where a bifurcation begins, are the most rudimentary minutiae. Once the point has been situated, its location is commonly indicated by the distance from the core, with the core serving as the 0,0 on an X,Y-axis. In addition to the placement of the minutia, the angle of the minutia is normally used. When a ridge ends, its direction at the point of termination establishes the angle. This angle is taken from a horizontal line extending rightward from the core, and can be up to 359. • In addition to using the location and angle of minutiae, some classify minutia by type and quality. The advantage of this is that searches can be quicker, as a particularly notable minutia may be distinctive enough to lead to a match. [6]

  21. Template Selection • The matching accuracy of a biometrics-based authentication system relies on the stability (permanence) of the biometric data associated with an individual over time. • The biometric data acquired from an individual is susceptible to changes introduced due to improper interaction with the sensor (e.g., partial fingerprints), modifications in sensor characteristics (e.g., optical vs. solid-state fingerprint sensor), variations in environmental factors (e.g.,dry weather resulting in faint fingerprints) and temporary alterations in the biometric trait itself (e.g., cuts/scars on fingerprints). • Thus, it is possible for the stored template data to be significantly different from those obtained during authentication, resulting in an inferior performance (higher false rejects) of the biometric system. [9] Variation in fingerprint exhibiting partial overlap.

  22. Template Selection-contd..(Solutions to variations) • Multiple templates, that best represent the variability associated with a user's biometric data, should be stored in the database. (E.g. One could store multiple impressions pertaining to different portions of a user'sfingerprint in order to deal with the problem of partially overlapping fingerprints.) • There is a tradeoff between the number of templates, and the storage and computational overheads introduced by multiple templates. • For an efficient functioning of a biometric system, this selection of templates should be done automatically. • There are two methods that are discussed in the literature. Please refer to references [9] for further details.

  23. Matching Algorithm • Automatic Minutiae Detection: Minutiae are essentially terminations and bifurcations of the ridge lines that constitute a fingerprint pattern. • Automatic minutiae detection is an extremely critical process, especially in low-quality fingerprints where noise and contrast deficiency can originate pixel configurations similar to minutiae or hide real minutiae. • Algorithm: • The basic idea here is to compare the minutiae on the two images. • The figure alongside is the input given to the system, as can be seen from the figure the various details of this image can be easily detected. Hence, we are in a position to apply the AMD algorithm.

  24. Matching Algorithm-contd.. • Algorithm (contd.) • The next step in the algorithm is to mark all the minutiae points on the duplicate image of the input fingerprint with the lines much clear after feature extraction. • Then this image is superimposed onto the input image with marked minutiae points as shown in the figure. • Finally a comparison is made with the images in the database and a probabilistic result is given.

  25. Problems With AMD • It is difficult to extract the minutiae points accurately when the fingerprint is of low quality. • This method does not take into account the global pattern of ridges and furrows. • Fingerprint matching based on minutiae has problems in matching different sized (unregistered) minutiae patterns.

  26. FX3 Algorithm [2] • FX3 sdk is a collection of innovative algorithms for the processing, feature extraction and matching of fingerprints which provides great security and efficiency. • FX3 implements different matching stages (multi-modal matching) and performs feature extraction, directly on the gray-scale images.

  27. Accuracy • FAR - False Accept Probability that an impostor is wrongly accepted by the system. • FRR- False Reject Rate Probability that an authorized user is wrongly rejected by the system. • EER - Defined as the threshold value where the FAR and FRR are equal. • Lower EER means better performance. • Existing System: • 0.01% FAR & 1% FRR (depends on evaluation scheme)

  28. Research Issues • Some of the research issues are related to security of the fingerprint recognition system, while some are related to improving the general system so that we get a better FAR & FRR. • The research topics that we have covered in our presentation are: 1) Multibiometrics System. 2) Security against Fake fingerprints. 3) Third Level Detail.

  29. Multibiometrics Systems • Multibiometric systems as the name implies use multiple biometric traits. • Multibiometric systems, are expected to be more reliable. • Multibiometric systems address the problem of non-universality, since multiple traits can ensure sufficient population coverage. • Multibiometric systems provide anti-spoofing measures by making it difficult for an intruder to simultaneously spoof the multiple biometric traits of a legitimate user. • By asking the user to present a random subset of biometric traits, the system ensures that a “live” user is indeed present at the point of data acquisition. Thus, a challenge-response type of authentication can be facilitated using multibiometric systems.[12]

  30. Attacks Artificially created Biometrics Attack at the Database Attacking Via Input Port

  31. Attacks-contd.. Spoofing:- “The process of defeating a biometric system through the introduction of fake biometric samples”. Examples of spoof attacks on a fingerprint recognition system are lifted latent fingerprints and artificial fingers. • Examples of spoofed fingers. • Put subject’s finger in impression material and create a mold. • Molds can also be created from latent fingerprints by photographic etching techniques like those used in making of PCB (gummy fingers). • Use play-doh, gelatin, or other suitable material to cast a fake finger. • Worst-case scenario: dead fingers.[7]

  32. Attacks-solutions.. • Hardware Solution • Temperature sensing, detection of pulsation on fingertip, pulse oximetry, electrical conductivity, ECG, etc. • Software Solution (Research going on) • Live fingers as opposed to spoofed or cadaverous fingers show some kind of moisture pattern due to perspiration. • The main idea behind this method is to take two prints after a time frame of say 5 seconds and the algorithm makes a final decision based on the vitality of the fingerprint. [7] Live Dead

  33. Third Level Detail • This is the newest approach under research towards fingerprint recognition. • Here the expert is not specifically analyzing the fingerprint characteristics, rather they are studying the pores and the outlines of the fingerprint ridges. • The above fingerprint has been developed on clear plastic with cyanoacrylate fuming. • The level of third level detail that can be recovered is very dependant on the chemical treatments used and the subsequent quality of the mark. • If for example the fingerprint has been stained with Basic Yellow the dye often obscures the pore detail.

  34. Third Level Detail-contd.. • To maximize the quality of the fingerprint the image was lit from behind the baseboard as seen in the diagram alongside:- • Once the fingerprint had been acquired it is placed into the ‘digital darkroom’ (Image Pro Plus) for processing. Then the following steps are carried out:- • 1. Application of a sobel filter. • 2. The image is inverted. • 3. Thresholding is applied to the image to remove some of the grey scale values. • The fingerprint is now ready for analysis and can be printed at any size the user requires.[11]

  35. Applications • Banking Security - ATM security,card transaction • Physical Access Control (e.g. Airport) • Information System Security • National ID Systems • Passport control (INSPASS) • Prisoner, prison visitors, inmate control • Voting • Identification of Criminals • Identification of missing children • Secure E-Commerce (Still under research)

  36. Biometric Comparison

  37. Latest Technologies • Fingerprint Registry Service-Lockheed Martin [10] • The Fingerprint Registry Service is a low-investment approach to state-of-the-art fingerprint technology. • Technology needed for civil, commercial and volunteer organizations to screen individuals using modern fingerprint technology is expensive. • The Lockheed Martin Fingerprint Registry Service Center was opened in August ‘98 in Orlando, FL. • The center provides affordable, centralized fingerprint processing and database management services to volunteer organizations, financial institutions, schools and service agencies at the national, state, and local levels. • Provides fingerprint technology that will be very effective at screening applicants for sensitive jobs and for identifying individuals with undesirable histories, regardless of alias.

  38. Latest Technologies-contd.. • Compaq Fingerprint Identification Technology • The first affordable biometric security technology offering. • Compatible with Compaq DeskPro, Armada PCs, and Professional Workstations. • Compatible with Microsoft Windows 95 and Windows NT Workstation 4.0 operating systems. • Dramatically improves the security of Microsoft Windows NT based networks by effectively replacing passwords with unique fingerprints. • Uses Identicator’s reader technology and it’s software algorithm technology. • The fingerprint reader is compatible and complimentary to all smart card based systems.

  39. References • Biometric systems lab - http://bias.csr.unibo.it/research/biolab/bio_tree.html • Biometrica - http://www.biometrika.it/eng/wp_fx3.html • International Biometric Group – http://www.biometricgroup.com/reports/public/ reports/finger-scan_extraction.html • Dr. Dirk Scheuermann - “http://www.darmstadt.gmd.de/~scheuerm/lexikon/vlta_eng.html” • Handbook of fingerprint recognition - D. Maltoni, D. Maio, A. K. Jain, S. Prabahakar - Springer – 2003 • BiometricsInfo.org - http://www.biometricsinfo.org/fingerprintrecognition.htm • “Issues for liveliness detection in Biometrics” - Stephanie Schuckers, Larry Hornak,Tim Norman, Reza Derakhshani, Sujan Parthasaradhi • “Overview of Biometrics & Fingerprint Technology” - Dr. Y.S. Moon • “Biometric Template Selection: A Case Study in Fingerprints” - Anil Jain, Umut Uludag and Arun Ross http://biometrics.cse.msu.edu/JainUludagRoss_AVBPA_03.pdf • Fingerprint Registry Service - http://www.lockheedmartin.com/lmis/level4/frs.html • Rideology and Poroscopy - http://www.eneate.freeserve.co.uk/thirdlevel.PDF • Multibiometric Systems - Anil K. Jain and Arun Ross http://biometrics.cse.msu.edu/RossMultibiometric_CACM04.pdf111

  40. Thank You!!

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