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Offline Signature Verification using Spatial Domain Feature Sets and Support Vector Machine

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Figure

Figure 2. Signature image after applying concentric squares
Figure 3. Classification by SVM between two classes
TABLE II.  FAR, FRR And TSR Values For Existing Algorithms And Proposed

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