Dual-Level Secured Autonomous Bank Locker System

Main Article Content

Shanmugasundaram M
Bagubali A
Rajesh R
Hemprasad Yashwant Patil
Dhanabal R
Karthikeyan A
Ann Mary Andrews
Akshit Nagpal

Abstract

The proposed development intends to establish an autonomous bank locker using industry-standard innovative locker technologies to deliver more flexible and reasonably priced semi-autonomous bank security mechanisms with minimal human intervention. In this design, there are two layers of locker security. The system proposed in this effort is a better security system regarding the number of security tiers. Its primary base is facial recognition. The first level is implemented by asking the user to input a passkey. A matrix keypad and Python programming are both employed. The user is then authorized to continue to the subsequent stage if a match is confirmed to exist. The second level was implemented using Python programming, OpenCV software, and face detection and identification techniques. To make Windows compatible with third-party apps Putty and Xming, the Raspberry Pi was linked to the laptop using IEEE 802.3 Ethernet and X11 forwarding on the UBUNTU operating system. IEEE 802.11 USB Wi-Fi was used to connect devices to the Wi-Fi network. The HAAR OpenCV standard has been used for face detection because of its better Face Acceptance and Rejection Ratio. The EIGENFACES OpenCV standard is employed for face recognition due to its efficacy, robustness, and simplicity.

Article Details

How to Cite
M, S. ., A, B. ., R, R. ., Patil, H. Y. ., R, D., A, K. ., Andrews, A. M. ., & Nagpal, A. . (2023). Dual-Level Secured Autonomous Bank Locker System. International Journal on Recent and Innovation Trends in Computing and Communication, 11(4), 269–277. https://doi.org/10.17762/ijritcc.v11i4.6452
Section
Articles

References

Bansal A; Mehta K.; Arora S. (2012): Face Recognition Using PCA and LDA Algorithm, Second International Conference on Advanced Computing & Communication Technologies, pp. 251-254.

Beumer G M;, Tao Q; Bazen A M; Veldhuis R N J, (2006): A landmark paper in face recognition, 7th International Conference on Automatic Face and Gesture Recognition (FGR06), pp. 66.-78.

GuangShun Shi; BiJia Lan; Liang Huang; XiaoYong Peng; Jia Feng Ma; Qian Liang, (2011): Research of face recognition under active infrared lighting based on embedded system, The First Asian Conference on Pattern Recognition, pp. 535-539.

Haibin Lv; Di Lu; Limin Yan. (2021): Face Detection and Recognition Algorithm in Digital Image Based on Computer Vision Sensor, Journal of Sensors, 2021, pp. 1-16.

Huang Chenxi; Yuan Zhenguo. (2020): Face Detection and Recognition Based on Visual Attention Mechanism Guidance Model in Unrestricted Posture, Scientific Programming, 2020, pp. 1–10.

Jiarui Zhou; Lai Jiang; Zhen Ji; Linlin Shen. Haar-like features based eye detection algorithm and its implementation on TI TMS320DM6446 platform, (2009): IEEE International Workshop on Imaging Systems and Techniques, pp. 89-93.

Murugappan M; Mutawa A. (2021): Facial geometric feature extraction based emotional expression classification using machine learning algorithms, PLoS ONE, 16 (2), pp.1-20.

Senthilkumar G; Gopalakrishnan K;, Sathish Kumar V, (2014): Embedded Image Capturing System using Raspberry Pi system, International Journal of Emerging Trends & Technology in Computer Science, 3 (2), pp. 213–215.

Verma A; A Multi-Layer Bank Security System, (2013): International Conference on Green Computing, Communication and Conservation of Energy (ICGCE), pp. 914-917.

Wang J.; Wang B.; Zheng Y; Liu W. (2019): Research and Implementation on Face Detection Approach Based on Cascaded Convolutional Neural Networks, (2017): International Conference on Vision, Image and Signal Processing (ICVISP), pp. 34-39.

Xiong T; Wang S. (2019): Intelligent farm management and control system based on Raspberry Pi, IEEE 3rd Advanced Information Management, Communicates, Electronic and Automation Control Conference (IMCEC), pp. 1286-1290.

Yadav M.; Koul R.; Suneja K, (2020): FPGA Based Hardware Design of PCA for Face Recognition, 7th International Conference on Signal Processing and Integrated Networks (SPIN), pp. 642-646.