A Perspective Analysis of Handwritten Signature Technology
- URL: http://arxiv.org/abs/2405.13555v1
- Date: Wed, 22 May 2024 11:41:19 GMT
- Title: A Perspective Analysis of Handwritten Signature Technology
- Authors: Moises Diaz, Miguel A. Ferrer, Donato Impedovo, Muhammad Imran Malik, Giuseppe Pirlo, Rejean Plamondon,
- Abstract summary: Handwritten signatures are biometric traits at the center of debate in the scientific community.
This perspective reports a systematic review of the last 10 years of the literature on handwritten signatures.
- Score: 7.193142573563886
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Handwritten signatures are biometric traits at the center of debate in the scientific community. Over the last 40 years, the interest in signature studies has grown steadily, having as its main reference the application of automatic signature verification, as previously published reviews in 1989, 2000, and 2008 bear witness. Ever since, and over the last 10 years, the application of handwritten signature technology has strongly evolved, and much research has focused on the possibility of applying systems based on handwritten signature analysis and processing to a multitude of new fields. After several years of haphazard growth of this research area, it is time to assess its current developments for their applicability in order to draw a structured way forward. This perspective reports a systematic review of the last 10 years of the literature on handwritten signatures with respect to the new scenario, focusing on the most promising domains of research and trying to elicit possible future research directions in this subject.
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