Identification Of Criminals Using Face Recognition System
Keywords:
Aadhar, Crime Buster, Facial Recognition, Law Enforcement, Criminal Identification, Biometric Data, Surveillance, Public Safety, Real-Time Matching, Privacy and EthicsAbstract
The "Identification of criminals using face recognition system" is a cutting-edge8facial recognition system created specifically to8improve law enforcement operations by8using facial recognition technology with the Indian government's Aadhar database. By automatically comparing the photos of those caught committing crimes with their Aadhar information, the project seeks to transform the identification and tracking of criminals.
By instantly comparing Aadhar8records with surveillance photos, the method8seeks to expedite criminal detection. It improves the accuracy of suspect identification8by analysing and comparing facial traits8with the vast Aadhar database8using sophisticated algorithms. By providing law enforcement agencies with a dependable tool for quick responses to criminal situations while upholding privacy and ethical norms, this proactive strategy improves public safety.
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