Studyspark Study Document

Fingerprint Classifications Practical Applications of Fingerprint Classifications Term Paper

Pages:9 (2481 words)

Sources:1+

Subject:Other

Topic:Classification

Document Type:Term Paper

Document:#35517064


Fingerprint Classifications

Practical Applications of Fingerprint Classifications in Forensic Science

Fingerprint identification has numerous practical applications. Particular fingerprints may be matched to individuals because they are distinct and unchanging. The individuality of fingerprints is based on the ridge structure and minutiae. The recognition of these landmarks, including shape, number, and location is an automated process by which computer algorithms filter data and match a subset of individuals with a particular print. More complex analyses are then performed to identify the individual who matches the print from the subset of prospects. Overall, the accuracy of these technologies is extremely high and is considered the gold-standard for individual recognition. Future technologies such as DNA fingerprinting and iris scan algorithms appear promising and may replace fingerprinting in the future.

Practical Applications of Fingerprint Classifications in Forensic Science

Large volumes of fingerprints are collected and stored everyday for use in a wide range of applications including forensics, access control, and driver license registration. Automatic recognition of people based on fingerprints requires that the input fingerprint be matched with a large number of fingerprints in a database. For example, the Federal Bureau of Investigation database contains approximately 70 million fingerprints (Azoury et al., 2004). To reduce the search time and computational complexity, it is desirable to classify these fingerprints in an accurate and consistent manner so that the input fingerprint is required to be matched only with a subset of the fingerprints in the database.

According to most professional criminal investigators, fingerprints obey three fundamental principles. These principles are:

1. A fingerprint is an individual characteristic. It is yet to be found that prints taken from different individuals possess identical ridge characteristics.

2. A fingerprint will remain unchanged during an individual's lifetime.

3. Fingerprints have general characteristic ridge patterns that permit them to be systematically classified.

Fingerprinting analysis has been used for more than a century. However, this technology is still widely used in law enforcement agencies. Because of its unique characteristic, it is conclusive evidence and a valuable tool among advanced technology. However, there is a chance it might lose its ground by DNA fingerprint, which is more sophisticated and accurate than traditional fingerprint.

There are three types of fingerprints that may exist at crime scenes. First, visible prints are made from finger stained with colored materials such as ink, blood, and grease. In addition, plastic prints may be formed by pressing onto a soft surface such as clay, soap, and wax. Finally, a latent print is an invisible print left on an object by the body's natural greases and oils. Because it cannot be seen by the naked eye, fingerprint powders, chemicals, and even lasers are used to make fingerprints visible on the crime scene evidence.

In North America, one of the first successful uses of fingerprints for identification was by E. Henry in 1901 in order to stop the railway workers from double collecting pay (Schulz, Reichert, Wehner, & Mattern, 2004). The Henry system derives from the pattern of ridges, which are concentrically patterns on the hands, toes, feet, and fingers. It has reliably been proven that no two individuals have identical ridge patterns, ridge patterns are not inheritable, ridge patterns are formed in the embryo, ridge patterns never change in life, and after death may only change as a result of decomposition. In life, ridge patterns are only changed by accident, injury, burns, disease or other unnatural causes.

The individuality of any fingerprint may be based not upon the general shape or pattern that it forms, but instead upon its ridge structure and specific characteristics, also known as minutiae. The recognition of these ridges, their relative number, and the approximate location of them, on the observed print, are the special characteristics that make the fingerprint a specific identifying characteristic of each individual. There are at least 150 individual ridge characteristics on the average fingerprint. If between 10 and 16 specific points of reference for any two corresponding fingerprints identically compare, a match may be assumed. In a judicial proceeding, a point-by-point comparison must be graphically demonstrated for at least 12 different, but corresponding, points in order to prove the identity of a specific person (Maudling & Attwood, 2004).

Fingerprint classification is a technique to assign a fingerprint into one of the several pre-specified types already established in the literature, which can provide an indexing mechanism. Fingerprint classification may be viewed as a coarse level matching of the fingerprints. An input fingerprint is first matched at a coarse level to one of the pre-specified types. Then, at a finer level, it is compared to the subset of the database containing that type of fingerprints only. Algorithms have been developed to classify fingerprints into five classes. These classes include whorl, right loop, left loop, arch, and tented arch. The algorithm separates the number of ridges present in four directions (0 degree, 45 degrees, 90 degrees, and 135 degrees) by filtering the central part of a fingerprint with a bank of Gabor filters (Blotta & Moler, 2004). This information is quantified to generate a FingerCode, which is used for classification. Classification is based on a two-stage classifier, which uses a K-nearest neighbor classifier in the first stage and a set of neural networks in the second stage. For the five-class problem, classification accuracy of 90% is typically achieved. For the four-class problem (arch and tented arch combined into one class), classification accuracy is ~95%.

Identification from fingerprints requires the differentiation of uninterrupted papillary ridge contours followed by the mapping of anatomic marks or interruptions of the same ridges. Codified in the late 1800's as Galton features, minutiae are at their most rudimentary ridge endings, the points at which a ridge stops, and bifurcations, the point at which one ridge divides into two. Many types of minutiae exist, including dots (very small ridges), islands (ridges slightly longer than dots, occupying a middle space between two temporarily divergent ridges), ponds or lakes (empty spaces between two temporarily divergent ridges), spurs (a notch protruding from a ridge), bridges (small ridges joining two longer adjacent ridges), and crossovers (two ridges which cross each other).

There are three basic fingerprint patterns: arch, loop and whorl. There are more complex classification systems that further break down the pattern to plain arches or tented arches. Loops may be radial or ulnar. Whorls also have smaller classifications. However, the five most commonly used are: whorl, right loop, left loop, arch 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. This fingerprint is a right loop.

Other features are essential to fingerprint authentication. 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 ridges are also marked by pores, which appear at steady intervals. Some initial attempts have been made to use the location and distribution of the pores as a means of authentication, but the resolution required to capture pores consistently is very high.

Common definitions of anatomic criteria used in fingerprint analysis are described below:

Ridge is defined as having double the distance from starting to ending, as neighboring ridges are wide

Evading ends are two ridges with different directions run parallel with each other for more than 3mm.

Bifurcation describes where a ridge splits, both ridges maintain the same direction and are longer than 3mm

Hook describes the location where a ridge splits; one ridge is not longer than 3mm

Fork describes where two ridges are connected by a third ridge not longer than 3mm

Dot is the ridge section is no longer than the neighboring ridges are wide

Eye is the region where the ridge splits and rejoins within 3mm

Island is where a ridge splits and joins again within not less than 3mm and not more than 6mm. The enclosed area is ridgeless.

Enclosed ridge is a ridge not longer than 6mm between two other ridges

Enclosed loop is a non-pattern determining loop between two or more parallel ridges.

The anatomic characteristics have an orientation or direction. A vector analysis of the direction change of the ridge lines can produce an average that reflects this orientation. The distance between ridge lines and anatomic feature give a length to the vector produced by orientating the anatomic characteristics. This is dependent on the sensor reproducing repeatable results independent of pressure spread or melting of the ridgelines.

Of the two types of arches, the plain arch is the simplest of all fingerprint patterns. It is formed by ridges entering from one side of the print and existing on the opposite side. These ridges tend to rise at the center of the pattern, forming a wavelike structure. The…


Sample Source(s) Used

References

Azoury, M., Cohen, D., Himberg, K., Qvintus-Leino, P., Saari, T., & Almog, J. (2004). Fingerprint detection on counterfeit U.S. dollar banknotes: the importance of preliminary paper examination. J Forensic Sci, 49(5), 1015-1017.

Blotta, E., & Moler, E. (2004). Fingerprint image enhancement by differential hysteresis processing. Forensic Sci Int, 141(2-3), 109-113.

Maudling, N., & Attwood, T.K. (2004). FAN: fingerprint analysis of nucleotide sequences. Nucleic Acids Res, 32(Web Server issue), W620-623.

Saatci, E., & Tavsanoglu, V. (2003). Fingerprint image enhancement using CNN filtering techniques. Int J. Neural Syst, 13(6), 453-460.

Cite this Document

Join thousands of other students and "spark your studies."

Sign Up for FREE
Related Documents

Studyspark Study Document

Fingerprints Are the Impressions of

Pages: 11 (3186 words) Sources: 10 Subject: Criminal Justice Document: #787489

E., their individuality and permanence, are the basic reason behind their having supplanted other previous methods of personal identification and explain the fact that fingerprints continue to hold their own against other more modern methods of identification such as DNA testing. Individuality of Fingerprints In more than 100 years since fingerprint records of individuals started to be collected and compared, no two fingerprints of two different persons, including those of identical twins,

Studyspark Study Document

Fingerprints Vs. DNA: Is One

Pages: 7 (3159 words) Sources: 7 Subject: Physics Document: #85872409

(Aronson, 2007) The problems and future of DNA Testing The scientific soundness of the DNA test has not been doubted at all. Courts have increasingly relied on the outcomes of DNA tests. The common man is at a loss to understand the complexities of the method, and as a result in jury trials it is not taken as standard proof but approached with hesitancy. Jurors are ignorant of science and the

Studyspark Study Document

Security Issues of Online Communities

Pages: 60 (15576 words) Sources: 1+ Subject: Education - Computers Document: #35642606

This researcher rejects the existence of online communities because computer mediated group discussions cannot possibly meet this definition. Weinreich's view is that anyone with even a basic knowledge of sociology understands that information exchange in no way constitutes a community. For a cyber-place with an associated computer mediated group to be labeled as a virtual settlement it is necessary for it to meet a minimum set of conditions. These are:

Studyspark Study Document

Undocumented Students Equity to In-State Tuition: Reducing

Pages: 22 (8115 words) Sources: 6 Subject: Teaching Document: #92893549

Undocumented Students Equity to in-State Tuition: Reducing The Barriers There exist policy ambiguities and variations at federal, state, and institutional levels related to undocumented student access to and success in higher education and this has created problems for these students. This study investigated specific policies and procedures to provide the resources and capital to assist undocumented students as well as reviewed key elements of showing the correlation of these difficulties with ethnic

Studyspark Study Document

Clinical Psychology

Pages: 200 (60005 words) Sources: 1+ Subject: Psychology Document: #12402637

Clinical Psychology Dissertation - Dream Content as a Therapeutic Approach: Ego Gratification vs. Repressed Feelings

An Abstract of a Dissertation

Dream Content as a Therapeutic Approach: Ego Gratification vs. Repressed Feelings

This study sets out to determine how dreams can be used in a therapeutic environment to discuss feelings from a dream, and how the therapist should engage the patient to discuss them to reveal the relevance

Studyspark Study Document

Archival Mission and Practice How Does the

Pages: 5 (1633 words) Sources: 5 Subject: Business - Management Document: #346206

Archival Mission and Practice How does the primary mission of the archives (institutional vs. collecting) affect archival practice (acquisitions, processing, preservation, reference, etc.)? Historical organizational records often have continuing value to an organization. They may provide evidence of an organization's existence, practice, operations, and day-to-day functions (Fruscian, 2011). One of the key elements in establishing a successful archive is to define its mission or purpose. An archive's mission is often impacted by

Join thousands of other students and

"spark your studies".