Neural network approach to verifying manual signature
Authors: Glushchenko N.A., Konnova N.S. | |
Published in issue: #5(22)/2018 | |
DOI: 10.18698/2541-8009-2018-5-313 | |
Category: Informatics, Computer Engineering and Control | Chapter: Automation, Control of Technological Processes, and Industrial Control |
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Keywords: neutral network, perceptron, artificial intelligence, biometrics, computer vision, image processing, verification, manual signature |
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Published: 10.05.2018 |
Manual signature is widely used in daily life. There are several different approaches to its recognition. This article deals with the method of static (offline) verification of manual signature. We compare various approaches to verification with regard to the errors of the first and second kinds. The article reviews publications in this topical area and describes general verification algorithm with the use of artificial neutral networks. We consider the suggested verification algorithm using multi-layer neural network, describe its stages, present the results of its implementation in the Python language and make a conclusion concerning the prospects for further development of this field.
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