Criminal Investigation Tracker with Suspect Prediction using Machine
Learning
- URL: http://arxiv.org/abs/2302.10423v1
- Date: Tue, 21 Feb 2023 03:24:17 GMT
- Title: Criminal Investigation Tracker with Suspect Prediction using Machine
Learning
- Authors: S. J. Dilmini (1), R. A. T. M. Rajapaksha (1), Erandika Lakmali (2),
S. P. S. Mandula (1), D. D. G. Delgasdeniya (1), Pradeepa Bandara (1) ((1)
Faculty of Computing, Sri Lanka Institute of Information Technology, Malabe,
Sri Lanka, (2) University of Kelaniya, Dalugama, Kelaniya, Sri Lanka)
- Abstract summary: This study provides a novel approach for crime prediction based on real-world data, and criminality incorporation.
An automated approach to identifying offenders in Sri Lanka would be better than the current system.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An automated approach to identifying offenders in Sri Lanka would be better
than the current system. Obtaining information from eyewitnesses is one of the
less reliable approaches and procedures still in use today. Automated criminal
identification has the ability to save lives, notwithstanding Sri Lankan
culture's lack of awareness of the issue. Using cutting-edge technology like
biometrics to finish this task would be the most accurate strategy. The most
notable outcomes will be obtained by applying fingerprint and face recognition
as biometric techniques. The main responsibilities will be image optimization
and criminality. CCTV footage may be used to identify a person's fingerprint,
identify a person's face, and identify crimes involving weapons. Additionally,
we unveil a notification system and condense the police report to Additionally,
to make it simpler for police officers to understand the essential points of
the crime, we develop a notification system and condense the police report.
Additionally, if an incident involving a weapon is detected, an automated
notice of the crime with all the relevant facts is sent to the closest police
station. The summarization of the police report is what makes this the most
original. In order to improve the efficacy of the overall image, the system
will quickly and precisely identify the full crime scene, identify, and
recognize the suspects using their faces and fingerprints, and detect firearms.
This study provides a novel approach for crime prediction based on real-world
data, and criminality incorporation. A crime or occurrence should be reported
to the appropriate agencies, and the suggested web application should be
improved further to offer a workable channel of communication.
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