

Face Detection and Recognition for Lawbreakers Using ML
Abstract
Everyone is aware that a person's face is a distinctive and essential component of their physical makeup and identity. Consequently, we can use it to discover a criminal's identify. With the development of technology, CCTV is now installed in many public locations to record illegal activity. The criminal face recognition system can be put into use using the previously photographed criminal faces and photos that are available in the police station. In order to improve and modernize the criminal differentiating process and give the Police Department a more effective and efficient method, we suggest an automatic criminal identification system in this article. This idea will improve the current system while raising the bar for criminal detection through the use of technology. By automating processes, this proposal will improve the current system while bringing criminal detection to a whole new level. Face recognition software will be the technology at work behind it. The video footage of the person entering that public space is compared to the criminal information stored in our database. The system will display that person's image on the screen and notify you with their name that the criminal has been located and is present in this public area if any other person's face from a public place matches.
References
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