International Conference on Global Trends in Engineering, Technology and Management (ICGTETM-2016) The Fingerprint Enhancement Techniques – Study and Review Mayur S. Patil1, Sandip S. Patil2 1 PG Student, Department of Computer Engineering, North Maharashtra University, Jalgaon SSBT’s COET, Bambhori, Jalgaon, Maharashtra, India 2 Associate Professor, Department of Computer Engineering, North Maharashtra University, Jalgaon SSBT’s COET, Bambhori, Jalgaon, Maharashtra, India Abstract: Now a days, the biometric identification is most accepted. It is well known that human being has a unique fingerprint pattern which does not change over the whole life time. The fingerprints of even identical twins are different. That’s why the fingerprints are so much popular as the biometric identifier. In this the main thing is to match the original fingerprint with the existing fingerprint which is present in the datasets. The image acquired for the matching must be of fine quality and it must be without of any kind of noise. The less the noise in the fingerprint images the more accurate further operations. However it is not always easy to obtain a good quality of fingerprint. Because of this the fingerprint image gives improper minutiae results. Therefore the fingerprints must be enhanced to extract the minutiae and get all the features of the fingerprints. So that it can reduce the false recognition or true rejection rates w.r.t. original fingerprints. There are three main techniques of enhancement. Pixel wise Enhancement Techniques, Contextual Filter Enhancement Techniques and Multi Resolution Enhancement Techniques. This paper focuses on these various Fingerprint Enhancement Techniques. shared or stolen. Also, they cannot differentiate between unauthorized and authorized client. Biometrics such as fingerprint, voice, face, etc. offers way of reliable personal authentication that can address these problems and is gaining citizen and government acceptance. Reliable extraction of features from poor quality fingerprint is the most challenging problem faced in the area of fingerprint recognition. Fingerprint image enhancement is the first step in every Automatic Fingerprint Identification System (AFIS), which improves the quality of the fingerprint image by removing noise and blur, thereby escalating the reliability of fingerprint recognition. The following Figure 1 represents the various patterns of Fingerprint. Keywords: Biometric identification, minutiae, fingerprint enhancement, Pixel wise Enhancement, Contextual Filter, Multi Resolution Enhancement, etc. I. INTRODUCTION Figure 1: Pattern of Fingerprint In this ever more digital globe, unfailing personal authentication has become an essential human computer interface activity. E-commerce, access to computer networks and National Security are some examples where establishing a person’s identity is very important. Along with security variables [like password, key, fingerprint, etc.], the fingerprint is the most widely used entity since they are unique and do not change over life time and even not at all need to be remembered.[4] Security measures apart from biometric rely on knowledge-based approaches like passwords or token based approaches such as swipe cards to control access to physical and virtual spaces. Though ubiquitous, such methods are not very secure. Tokens such as badges and access cards may be ISSN: 2231-5381 II. BACKGROUND An impression left by friction ridges on a surface is known as fingerprint. If it is taken by direct imaging (e.g. by putting the finger directly on a scanner), it is called an online fingerprint whereas if the impression is taken on any other surface, then it is called offline fingerprint. A fingerprint pattern consists of ridges and valleys. A ridge is a narrow elevated skin which looks like a line on a finger surface and the valleys are the furrows which separate the ridges. The neighbouring page Figure 2 shows the general fingerprint identification system. http://www.ijettjournal.org Page 630 International Conference on Global Trends in Engineering, Technology and Management (ICGTETM-2016) III. MOTIVATION Figure 2: General Fingerprint Identification System There are three structural levels in a fingerprint which are discussed below: The motivation behind this is rising necessity to identify an individual for security; fingerprint enhancement to get better superiority of fingerprint along with extract minutiae points. And in the extraction process one should not get the bogus minutiae and conserve the accurate ridge bifurcations and endings. Minutia extracted from the fingerprint greatly depends on quality of input finger print. For extracting the exact Minutiae from the fingerprint it is desirable to remove noise from the input image and for that there is need of enhancement algorithm for accuracy. IV. FINGERPRINT ENHANCEMENT TECHNIQUES A. Global Pattern Level This represents the overall pattern of a fingerprint. For example, in a fingerprint, ridges may enter from bottom-right and then after looping around the center, they may exit from the bottom right again. According to Henry [1] classification of fingerprints, it is called right loop. Similarly, there are other such global patterns and Henry’s classification in this respect is exclusive and almost exhaustive. This structure is mainly used for fingerprint classification and/or indexing. B. Local Ridge Pattern Level This is the pattern on which most of the identification algorithms are designed. Ridges in a fingerprint may not be continuous. Some ridges split into two ridges known as bifurcations while some end at some point termed as ridge endings. Such positions are important in a fingerprint. All these are called minutiae points. Minutiae are points which are combination of ridge ending and bifurcation. In addition to this, there are some special points in a fingerprint (called singular points), core point and delta point. A core point is a point where the innermost ridge of a finger print turns. A delta point is a point where two ridges running side-by-side diverge. Not every fingerprint necessarily has core or delta point while some may have more than one such point. There are generally around 80 minutiae points in a complete fingerprint of a finger tip. C. Low Level Features It consists of the sweat pores which appear as white holes in the ridges. To obtain these features, very high resolution scanners are required and so these features are used by very sophisticated fingerprint matching systems. ISSN: 2231-5381 Image enhancement is the process of digitally manipulating a stored image using software. The tools used for image enhancement include many different kinds of software such as filters, image editors and other tools for changing various properties of an entire image or parts of an image [2]. The main three types of Fingerprint enhancement techniques having two or more subtypes of each are discussed as follows [1]: A. Pixel-wise enhancement i. Histogram Equalization ii. Contrast Enhancement iii. Normalization iv. Wiener Filter, etc. In this pixel based fingerprint image processing function the fresh value of each pixel only depends on earlier value and a few universal parameters (not depend on the value of the adjacent pixels). Pixel based techniques don’t create satisfying and ultimate results for fingerprint enhancement. Still, contrast stretching, histogram manipulation, normalization and Wiener filtering had given away to be helpful as initial processing steps in a added elegant fingerprint enhancement algorithm. B. Contextual filtering i. Fourier Transform ii. Gabor Filter iii. Bell Shaped Filter, etc. The broadly used method for fingerprint enhancement is based on contextual filter. In traditional image filtering just single filter is used for involvedness all the way through the fingerprint image. Within contextual filtering technique, the filter properties modify based on local context. http://www.ijettjournal.org Page 631 International Conference on Global Trends in Engineering, Technology and Management (ICGTETM-2016) Frequently, a bunch of filters is pre-computed and one of them is chosen for each fingerprint image area. In fingerprint image enhancement, the context is often defined by the local ridge orientation, local ridge frequency. In reality the sinusoidal-shaped wave of ridges and valleys is principally defined by a local orientation, frequency that varies slowly across the fingerprint area. A suitable filter that is tuned to the home ridge frequency and direction can efficiently removes the unwanted noise and preserve the accurate ridge valley arrangement. method to find out, ridge present on a fingerprint image by directly scanned fingerprints or inked impression. Robert Hastings, in [8] developed a way for enhancing the ridge pattern by using method of oriented diffusion by adaptation of anisotropic diffusion to smooth fingerprint in the direction parallel to the ridge flow. Fingerprint image intensity differs slickly as one traverse along the ridges or valleys by removing most of little irregularities and breaks but with the identity of individual ridges, valleys conserved. C. Multi Resolution Enhancement i. Dimensional Filter ii. Rotational Filter, etc. R. Sonawane et al., in [9] given a technique by introducing a special domain fingerprint image enhancement way which decomposes the image into a Multi-resolution enhancement has been planned [3] set of filtered fingerprint images after that orientation to remove noise from fingerprints. Decomposing the field estimated. Superiority mask distinguishes the image into various sub-images allows to pay damages recoverable as well the unrecoverable corrupted for different noise components at various scales: regions from input fingerprint images are generated particularly, at higher levels (low and middle using estimated orientation field, Input fingerprint frequency bands) the rough ridge-valley flow is adaptively enhanced into recoverable regions. cleaned and gaps are closed, whereas at the lower Eric Kukula et al., in [10] proposed a way for levels (upper frequencies) the improved details are conserved. The enhanced image bands are then investigating the result of five various force levels on fingerprint matching performance, fingerprint image recombined to gain the ultimate fingerprint image. superiority scores, minutiae count up between optical as well as capacitance fingerprint sensors. Three V. LITERATURE SURVEY fingerprint images were taken together from right index fingers of seventy five participants in favor of Arun et al., in [4] given that, contrast each sensing technology. Results disclose a important enhancements improve the perceptibility differentiation in fingerprint image quality score based (recognizable) of objects in the image by enhancing on force level and every sensor technology, yet there the brightness difference between objects and their is no major differentiation in minutiae count up based backgrounds. Contrast enhancements are normally on force level of capacitance sensor. Fingerprint performed since an contrast stretch followed with a image quality score, shown affected by force and tonal enhancement, even though these both can be sensor kind is one of many factors which influence the performed in single step. Contrast stretch improves the system matching performance, yet removal of low brightness differences uniformly across the dynamic quality fingerprint images doesn’t improve the system range of the image. performance at every force level. Prasanna et al., in [5] the challenges and the opportunities regarding the wet fingerprint recognition are given. Also authors have introduced a new database called WWF viz. Wet and Wrinkled Fingerprint. Shlomo et al., in [6] author proposed a pixel-wise adaptive Wiener method for noise reduction. Filter was based on local data estimated from a local neighborhood of size 3 X 3 of each pixel. Er.Nishi et al., in [3] in this paper in equalization method it improves the appearance and spread the quality of gray levels in order that they are equally distribute across their range. G. Sambasiva et al., in [7] projected fingerprint identification technique using a gray level watershed ISSN: 2231-5381 L. Lam et al., in [11] presented a method, thinning is the process of reducing thickness of each line of patterns to just an only one pixel width. Requirements of an excellent algorithm w.r.t a fingerprint are i) Thinned fingerprint image obtained should be of only one pixel width with no discontinuities ii) Every ridge must be thinned to this central pixel iii) Singular pixel, noise should be eliminated iv) No extra removal of pixel should be possible after completion of thinning process. Mana Tarjoman et al., in [12] introduced structural approach to fingerprint classifications by using the directional image of fingerprint instead of singularities. Directional finferprint image includes dominant direction of ridge lines. http://www.ijettjournal.org Page 632 International Conference on Global Trends in Engineering, Technology and Management (ICGTETM-2016) Bhupesh Gour et al., in [13] have developed a method for extraction of minutiae from fingerprint images using midpoint ridge contour representation. First step is segmentation to split foreground from background of fingerprint image. The grayscale intensities in 64x64 regions are normalized to a constant mean and variance to remove the effects of sensor noise and grayscale variations due to finger pressure differences. After the normalization the contrast of the ridges are enhanced by filtering 64x64 normalized windows by appropriately tuned Gabor filter. Processed image is after that scanned from top to bottom and left to right and transition from white (background) to black (foreground) are detected. The proposed method takes less and do not detect any false minutiae. Hartwing Fronthaler et al., in [14] proposed fingerprint enhancement to improve the matching performance and computational efficiency by using an image scale pyramid and directional filtering in the spatial domain. [9] [10] [11] [12] [13] [14] Digital Image Computing Techniques and Applications, pp. 245-252, 2007. Raju Sonavane and B. S. Sawant “Noisy Fingerprint Image Enhancement Technique for Image Analysis: A Structure Similarity Measure Approach”, Journal of Computer Science and Network Security, vol. 7 no. 9, pp. 225-230, 2007. Eric P. Kukula, Christine R. Blomeke, Shimon K. Modi, and Tephen J. Elliott “Effect of Human Interaction on Fingerprint Matching Performance, Image Quality, and Minutiae Count”, International Conference on Information Technology and Applications, pp. 771-776, 2008. L. Lam S. W. Lee, C. Y. Suen “Thinning Methodologies-A Comprehensive Survey”, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 14, pp. 869-885, 1992. Mana Tarjoman, and Shaghayegh Zarei “Automatic Fingerprint Classification using Graph Theory”, Proceedings of World Academy of Science, Engineering and Technology, vol. 30, pp. 831-835, 2008. Bhupesh Gour, T. K. Bandopadhyaya and Sudhir Sharma “Fingerprint Feature Extraction using Midpoint Ridge Contour Method and Neural Network”, International Journal of Computer Science and Network Security, vol. 8, no, 7, pp. 99-109, 2008. Hartwing Fronthaler, Klaus kollreider, and Josef Bigun “Local Features for Enhancement and Minutiae Extraction in Fingerprints”, IEEE Transactions on Image Processing, vol. 17, no, 3, pp. 354-363, 2008. VI. CONCLUSION This study and review of Fingerprint Enhancement can be conclude that biometric identification is having very much importance in today’s digital world. The Pixel wise enhancement techniques are having very basic and older functionalities. While the Contextual fingerprint enhancement techniques are quite superior to the previous one. And they are widely used. In future also the most advanced techniques of the fingerprint enhancement that is Multi resolution fingerprint enhancement will come into picture and it will produce constructive results. REFERENCES [1] [2] [3] [4] [5] [6] [7] [8] Davide Maltoni, Dario Maio, Anil K. Jain, Salil Prabhakar “Handbook of Fingerprint Recognition”, Second Edition, Springer, 2009. https://www.techopedia.com/de_nition/26314/imageenhancement Er.Nishi Madaan, Er.Arun Begill, “A Comprehensive Review of Various Image Enhancement Techniques”, International Journal of Advanced Research in Computer Engineering Technology, pp.1181-1185, April 2014. Arun Kavi Arasu, Mohamed Nizar, Prabhakaran D, “Review of Image Contrast Enhancement Techniques”, International Journal of Engineering Research Technology, pp.473-480, November 2013. 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