
Int J Performability Eng ›› 2026, Vol. 22 ›› Issue (6): 352-361.doi: 10.23940/ijpe.26.06.p6.352361
Payal Singha, Diwakar Agarwala, and Ajitesh Kumarb
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*E-mail address: Payal Singh, Diwakar Agarwal, and Ajitesh Kumar. A Machine Learning Approach Facilitating Contactless and Contact-Based Fingerprint Recognition through Magnitude Spectrum [J]. Int J Performability Eng, 2026, 22(6): 352-361.
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