Face Recognition for Criminal Analysis using Haar Classifier

Chethana H. T*, Trisila Devi C. Nagavi **
* Department of Computer Science and Engineering, Vidyavardhaka College of Engineering, Mysore, Karnataka, India.
** Department of Computer Science and Engineering, JSS Science & Technology University, Mysore, Karnataka, India.
Periodicity:March - May'2020
DOI : https://doi.org/10.26634/jcom.8.1.17390

Abstract

Face recognition plays a significant role in forensics. At present many face recognition methods has been implemented which extracts the face image of a suspect from moving or still image, then process the extracted face image by comparing it with the faces of criminals stored in a database and finally matching is done. Forensic world is challenging because every day there is increase in the number of crimes. In a crime scene, only partial information about the suspects is available and sometimes facial image of the suspect is not available. In this paper an attempt is made to speed up the process of criminal identification using Haar Classifier. Our proposed work focuses on preprocessing, feature extraction and classification using Haar Classifier. The proposed system can successfully detect and recognize most of the faces which helps to identify the criminals quickly.

Keywords

Face Recognition, Forensics, Pose Variation, Blurriness, Low Resolution, Facial Expression.

How to Cite this Article?

Chethana, H. T., and Nagavi, T. D. C. (2020). Face Recognition for Criminal Analysis using Haar Classifier. i-manager's Journal on Computer Science, 8(1), 14-20. https://doi.org/10.26634/jcom.8.1.17390

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