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Towards Improving Offline Signature Verification based Authentication Using Machine Learning Classifiers

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Figure

Table I: Biometric Characteristics  Description of  Characteristics
Table III: Methods used by researchers in OSV Dataset Type Classifier
Table V: Fake-authentic Hindi Signature pairs (Features) Euler
Fig. 5 MLP
+4

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