Publication Type : Conference Paper
Source : Proceedings of International Conference on Recent Trends in Computing, Communication & Networking Technologies (ICRTCCNT) 2019
Campus : Chennai
School : School of Computing
Department : Computer Science and Engineering
Year : 2019
Abstract : Researchers have recently found that the finger knuckle print is an emerging and promising biometric identifier. In order to get better performance in a biometric system requires fusion of multiple instances within a modality. This paper makes use of fractional theory to propose an efficient feature level of fusion scheme named as a Fractional Cuckoo Search algorithm (FCS) for finger knuckle images. In this work both left index and right index features of an individual are extracted by using HOG method. These feature vectors are fused by optimal weight score selection, which finds out the weights from the proposed fractional cuckoo search algorithm. Thus the performance of the proposed system has been evaluated with the help of multi- layered SVM classifier in terms of False Acceptance Ratio (FAR), False Rejection Ratio (FRR) and Accuracy. From the experimental results, our proposed optimization system obtains a better accuracy of 98.97%.
Cite this Research Publication : S.Veluchamy, Dr.L.RKarlmarx, A.Ponbharathi,"Development of High Recognition FKP System using Fractional Cuckoo Search Optimization Method", Proceedings of International Conference on Recent Trends in Computing, Communication & Networking Technologies (ICRTCCNT) 2019