GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS
Gender identification or classification is a challenging task in computer vision as the biometrics of male and female such as fingerprints, face, vein have many variations. Among the various biometrics, fingerprints are commonly available in a crime scene. In this, study, gender identification syste...
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doaj-d5bc0ef8980b4e4794390a2f76e92a082020-11-25T03:29:10ZengXLESCIENCEInternational Journal of Advances in Signal and Image Sciences2457-03702017-12-01321710.29284/ijasis.3.2.2017.1-723GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTSJaison BGender identification or classification is a challenging task in computer vision as the biometrics of male and female such as fingerprints, face, vein have many variations. Among the various biometrics, fingerprints are commonly available in a crime scene. In this, study, gender identification system for crime scene analysis using fingerprints is presented. Initially, the fingerprints are de-noised by median filter and Otsu thresholding is employed to binarize the fingerprints in the preprocessing stage. Then, the features are extracted by Box-Cox transformation method. Finally, the classification is made by logistic regression classifier. A better classification accuracy of 96% is achieved by the gender identification system using Box-Cox transformation and logistic regression classifier.https://xlescience.org/index.php/IJASIS/article/view/23fingerprints, gender identification, box-cox transformation, logistic regression classifier |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jaison B |
spellingShingle |
Jaison B GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS International Journal of Advances in Signal and Image Sciences fingerprints, gender identification, box-cox transformation, logistic regression classifier |
author_facet |
Jaison B |
author_sort |
Jaison B |
title |
GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS |
title_short |
GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS |
title_full |
GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS |
title_fullStr |
GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS |
title_full_unstemmed |
GENDER IDENTIFICATION SYSTEM FOR CRIME SCENCE ANALYSIS USING FINGERPRINTS |
title_sort |
gender identification system for crime scence analysis using fingerprints |
publisher |
XLESCIENCE |
series |
International Journal of Advances in Signal and Image Sciences |
issn |
2457-0370 |
publishDate |
2017-12-01 |
description |
Gender identification or classification is a challenging task in computer vision as the biometrics of male and female such as fingerprints, face, vein have many variations. Among the various biometrics, fingerprints are commonly available in a crime scene. In this, study, gender identification system for crime scene analysis using fingerprints is presented. Initially, the fingerprints are de-noised by median filter and Otsu thresholding is employed to binarize the fingerprints in the preprocessing stage. Then, the features are extracted by Box-Cox transformation method. Finally, the classification is made by logistic regression classifier. A better classification accuracy of 96% is achieved by the gender identification system using Box-Cox transformation and logistic regression classifier. |
topic |
fingerprints, gender identification, box-cox transformation, logistic regression classifier |
url |
https://xlescience.org/index.php/IJASIS/article/view/23 |
work_keys_str_mv |
AT jaisonb genderidentificationsystemforcrimescenceanalysisusingfingerprints |
_version_ |
1724580169621962752 |