GSM vigilance for electronic banking

Offences related to the ATM is spreading day by day which is a significant issue. ATM protection is used to allocate security against burglary. Though protection is provided for ATM machine, cases of burglary are spreading. Nowadays technologies allocate protection within machines for safety transaction, but machine is not secured smartly. The ATM machines are not secured since security provided traditionally by using CCTV (closed-circuit television) or by using watchman outside the ATM. This protection is not sufficient because control rooms are responding only after the burglary has been occurred specifically during night times. So, there is a necessity to propose new technology which can defeat this problem. This proposed technology focus to plan real-time monitoring. The system is put in to effect using Raspberry Pi microcontroller, PIR (Passive Infra-Red) sensor and GSM (Global System for Mobile Communication system), Buzzer System, Web cam which make the system more protected. For controlling purpose GSM is planned for sending the alert notifications to the administrative phone as well as sending images to the administrative e-mail through Raspberry Pi. Buzzer sounds will be alarmed in order to make uneasy the focus of robber. The control room pay attention on video footage after receiving alert notification of that specific ATM center and proper actions are taken. The proposed surveillance system provide storage effective and energy efficient.

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