After all, what is Face Recognition Technology that will identify Saif Ali Khan's attacker? Read full details here

Tech News Desk –Mumbai Police has caught the thief who entered Saif Ali Khan's house and attacked him. Police will identify the 30-year-old Bangladeshi thief with the help of face recognition technology. In Saif's case, the whole matter hinges on whether the person seen in the CCTV is Shariful or not. How does face recognition technology work? How will the police use it? You will get answers to all such questions here.

This is how the attacker was identified
According to reports, the police had noted down the registration number of the bike of the thief (Mohammad Shariful Islam Shahzad). Police will use face recognition technology to identify the face of the thief. During the entire investigation of this case, the police came to know that the attacker was seen three times outside Dadar Railway Station. The attacker had also gone to meet a labor contractor in the area.

What is face recognition technology?
Face recognition technology is a part of biometric technology. It helps in identifying a person by his face. It is also called biometric artificial intelligence based application. It is used to identify a person according to the retina of the eye and the shape of the nose and face. Facial recognition systems are used to identify people from photo-video or in real time.

These are the benefits of face recognition technology
This technology helps in identifying people without any contact. This technology helps in monitoring employees. Apart from this, it also helps in identifying criminals.

How does face recognition technology work?
Face recognition technology works on an algorithmic scale. In this you can recognize him by looking at his face. But this technology looks at facial data. The data collected by this technology can be accessed. This technology reads the data and shows the results. This technology is mostly used in security matters in systems like smartphones, cameras etc.

Comments are closed.