Face Recognition

ATM Face Recognition and Face Detection are biometric solutions for the banking and retail industries, based on the ATMeye.iQ self-service security software platform.

Face Detection biometric solution is used to determine whether a person is in front of a terminal device during a transaction. Face detection can be implemented on any self-service device equipped with a video camera and used as a fraud prevention tool.

Biometric Face Recognition solution uses a person’s image for authorization on self-service devices and can be utilized as a primary or secondary type of authorization.

Benefits

Application

Fraud prevention

Face Detection can protect terminal networks from certain types of logical attacks. If at the beginning of a transaction no face was detected, the terminal stops the service. If for some reason the ATM user hides his face from the cameras (for example, wants to use a stolen card), then one of the following scenarios can be implemented: switching off the terminal, sending a warning message to the user, sending an alarm message to the security service, etc. In addition, biometric authorization with Face Recognition allows implementing a two-factor customer authentication and avoiding card-related risks (skimming, trapping, etc.).

Multiple face detection

The optional Multiple Face Detection feature allows you to determine how many people are currently in front of the terminal device. If the system finds more than one person, it triggers one of the preset scenarios: a warning message appears on the screen with a request to continue working or a service cancelling scenario is activated and a security officer is notified. This option allows you to reduce the risk of unauthorized persons stealing PIN codes.

Solution delivery formats

All software solutions

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Kirill Ovsiannikov

Deputy General Director for Strategic Development