Comparison of the Effectiveness of Fingerprint Skeletal Methods

One way of working out biometric images is to build skeletons. When constructing a high-quality skeleton, the image should be scanned at 500 dpi, and 256 brightness gradations should be considered. During developing the algorithm, it's necessary to consider the expense of random-access memory and the processing time of the algorithm. Comparison of the Hilditch algorithm and wave oscillation for finger biometrics has been performed. Recommendations for application of the Hilditch algorithm for the application of fingerprint skeletonization are given, since its execution time is less.

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