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Gesture-Based Secure Pin Entry in ATM

Author(s): Akhilesh Thakur, Ashish Aryan, Jayendra Kumar, Roshan Kumar and Anumeha * .

Pp: 303-322 (20)

DOI: 10.2174/9789815080537123010019

* (Excluding Mailing and Handling)

Abstract

At present, ATMs (Automated Teller Machines) are one of the essential services for our daily life. It is also true that the thefts of false transactions and pin thefts are increasing yearly. A significant amount of theft at ATMs is due to pin overlooking and card skimming. Biometrics provide promising security but have high implementation costs. Also, Indian laws discourage using BiometricsBiometrics in all places. So, can AI be the solution to this problem? Instead of using keypad-based inputs for pins, gesture detection with AI can be used for secure inputs. A trained deep neural network can detect count from the hand symbols/gestures. The gesture input is given by inserting the hand inside a safe box with a high-resolution camera attached. The camera takes images and sends them to Raspberry Pi or any other embedded system. The Raspberry Pi executes the lightweight ML model to detect the count. The detected count is then encrypted and passed to the ATM. Using a gesture identification system removes the problem of pin theft and can be developed and implemented with the slightest modification in ATMs. In the current COVID period, execution of ATM works with minimum contact to public surfaces has increased immensely. In this system, a keypad is also removed and can further be incorporated to read a variety of inputs from gestures instead of just hands. This chapter explores how lightweight neural networks can be trained to detect sensors and run on low-processing systems like Raspberry Pi. We achieved an accuracy of 94%-97% in detecting gestures and pins where accuracy varies for each motion.

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