A Neural- ground Minutiae Pair Identi?cation Method for Touch-less Fingerprint Images Ruggero Donida Labati, Vincenzo Piuri, IEEE, Fellow, Fabio Scotti, IEEE, Member plane section of development Technologies Universit` degli Studi di Milano a Milano, 20122, Italy. ruggero.donida@unimi.it, vincenzo.piuri@unimi.it, fabio.scotti@unimi.it AbstractContact-based sensors be the traditional devices apply to captivate ?ngerprint images in commercial and homeland security applications. Contact-less bodys attain the ?ngerprint conquer by vision systems avoiding that exploiters touch any separate of the biometric device. Typically, the ?nger is laid in the working ara of an optics system conjugated with a CCD module. The captured light pattern on the ?nger is connect to the true ridges and valleys of the user ?ngertip, but the obtained images present strategic differences from the traditional ?ngerprint images. These differences are related to ninefold factors such as light, focus, blur, and the color of the skin. Unfortunately, the identicalness coincidence methods designed for ?ngerprint images captured with touch-based sensors do not obtain suf?cient truth when are directly applied to touch-less images.

Recent works coming into court that multiple views analysis and 3D reconstruction can prove the ?nal biometric accuracy of such systems. In this paper we propose a impertinent method for the identi?cation of the minutiae pairs between ii views of the same ?nger, an important footfall in the 3D reconstruction of the ?ngerprint template. The method is severable in the sequent tasks: ?rst, an image preprocessing step is performed; second, a act of nominee minutiae pairs is selected in the tw! o images, then a inclination of prognosis pairs is created; last, a set of local features centered more or less the two minutiae is produced and processed by a classi?er based on a trained neural network. The output of the system is the list of the minutiae pairs present in the input images. Experiments show that the method is...If you lack to get a full essay, order it on our website:
OrderEssay.netIf you want to get a full information about our service, visit our page:
write my essay
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.