DETECTION OF ADOLESCENCE USING FINGRPRINTS

Main Article Content

Ch.Manasa , Dr. S. Nagini

Keywords

Fingerprint, Optimal Light weight CNN hybrid model

Abstract

To realize the design efficacies related to fingerprint biometric systems with different ages groups multiple research developments have been introduced to implicate the design criteria. The current design on CNN or LSTM or SOA architectures have crude impacts on how to optimize the images and other functional features of the images considered. To analyze such design criteria, that have implemented an optimal solution with CNN as OLW algorithm to reduce the functional changes on tuning the hyper parameters. The goal of the proposed work is to reduce the number of comparisons in adolescent-based age groups with databases for fingerprints utilized to implicate the overall design with OLW-CNN algorithm. With these featured aspects we tend to implicate the design with performance metrics such as accuracy precision, recall and F1-score parameters to compare the existing approach with the proposed OLW-CNN. With this optimization the overall performance has been observed to reach 100%.

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