Application of Artificial Intelligence and Computer Vision Techniques to Signatory Recognition
Abstract:
In this paper, some known Artificial Intelligence(AI) and computer vision techniques are applied to the problem of recognizing the writer of an off-line signature(signatory) among many possible signatories. It is shown by practical examples that the way those techniques are used is very effective and may work efficiently even with a very large pictorial signature database.
How to cite this article
Maan Ammar , 2003. Application of Artificial Intelligence and Computer Vision Techniques to Signatory Recognition. Information Technology Journal, 2: 44-51.
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