| _version_ |
1860799751915569152
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| building |
INTELEK Repository
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| collection |
Online Access
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| collectionurl |
https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072
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| date |
2019-09-19 01:43:02
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| eventvenue |
West Java, Indonesia
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| format |
Restricted Document
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| id |
7253
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| institution |
UniSZA
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| originalfilename |
2586-01-FH03-FIK-19-28018.pdf
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| person |
Mozilla/5.0 (Windows NT 6.1; Win64; x64) AppleWebKit/537.36 (KHTML
like Gecko) Chrome/76.0.3809.132 Safari/537.36
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| recordtype |
oai_dc
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| resourceurl |
https://intelek.unisza.edu.my/intelek/pages/view.php?ref=7253
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| spelling |
7253 https://intelek.unisza.edu.my/intelek/pages/view.php?ref=7253 https://intelek.unisza.edu.my/intelek/pages/search.php?search=!collection407072 Restricted Document Conference Conference Paper application/pdf 4 1.6 Adobe Acrobat Pro DC 20 Paper Capture Plug-in Mozilla/5.0 (Windows NT 6.1; Win64; x64) AppleWebKit/537.36 (KHTML like Gecko) Chrome/76.0.3809.132 Safari/537.36 2019-09-19 01:43:02 2586-01-FH03-FIK-19-28018.pdf UniSZA Private Access Detection and extraction features for signatures images via different techniques Signature is one of the most important features to identify individuals. It represents a specific mark that includes handwritten characters or symbols. Also, signing takes place in a wide range of businesses, such as bank transactions and government documents so it provides a good way to maintain security, in biometric systems. Signature is used as a feature to identify the user by extracting a set of features. Over time, a number of techniques have been developed to identify and extract a set of features from the signature image. Although there are many of these techniques, there is a set of elements that determines the feasibility of using a particular technique, such as accuracy, computational complexity, and the time needed to extract features. In this paper, three widely used feature detection algorithms, SURF, BRISK and FAST, these algorithms are compared to calculate the processing time and accuracy for set of signatures correctly. Three techniques have been applied using (UTSig) dataset; the results showed that the BRISK algorithm got the best result among the feature detection algorithm in terms of accuracy and the FAST algorithm got the best result among the feature detection algorithm in terms of run time. 1st International Conference on Computer, Science, Engineering and Technology West Java, Indonesia
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| spellingShingle |
Detection and extraction features for signatures images via different techniques
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| summary |
Signature is one of the most important features to identify individuals. It represents a specific mark that includes handwritten characters or symbols. Also, signing takes place in a wide range of businesses, such as bank transactions and government documents so it provides a good way to maintain security, in biometric systems. Signature is used as a feature to identify the user by extracting a set of features. Over time, a number of techniques have been developed to identify and extract a set of features from the signature image. Although there are many of these techniques, there is a set of elements that determines the feasibility of using a particular technique, such as accuracy, computational complexity, and the time needed to extract features. In this paper, three widely used feature detection algorithms, SURF, BRISK and FAST, these algorithms are compared to calculate the processing time and accuracy for set of signatures correctly. Three techniques have been applied using (UTSig) dataset; the results showed that the BRISK algorithm got the best result among the feature detection algorithm in terms of accuracy and the FAST algorithm got the best result among the feature detection algorithm in terms of run time.
|
| title |
Detection and extraction features for signatures images via different techniques
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| title_full |
Detection and extraction features for signatures images via different techniques
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| title_fullStr |
Detection and extraction features for signatures images via different techniques
|
| title_full_unstemmed |
Detection and extraction features for signatures images via different techniques
|
| title_short |
Detection and extraction features for signatures images via different techniques
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| title_sort |
detection and extraction features for signatures images via different techniques
|