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a internet of things project report on door locking system with facial recognition with ai integration
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Govind Mahadev, Sinan Kabeer, Md Nadhir RA2311003050269 RA2311003050285 RA Department of Computer Science and Engineering, SRM University Abstract- This paper is a presentation that aims to give a deeper understanding of an IoT-based door-locking system that uses facial detection and recognition for enhanced security and automation. In this era, with the advancements happening in the field of the Internet of Things (IoT) and artificial intelligence (AI), traditional security mechanisms are evolving toward smarter and more reliable solutions. The proposed system employs a camera module for real-time face detection and recognition, a microcontroller (Arduino with ESP32), and a solenoidal door lock mechanism. The system ensures access control by comparing detected facial features with stored biometric data. This paper discusses the architecture, implementation, working principle, and security considerations of the proposed system. Keywords:- Internet of Things, Artificial intelligence, Biometric Authentication, Smart lock, Facial Recognition. I.INTRODUCTION Conventional security systems, such as key-based locks and password-protected entry mechanisms, have significant. limitations, including the risk of key misplacement, password breaches, and unauthorized duplication. In the coming future, security and access control play a vital role in modern residential, commercial, and Industrial infrastructures. The adoption of biometric authentication methods, such as facial recognition, offers a more secure and user-friendly approach to access control. Facial recognition technology leverages artificial intelligence and machine learning algorithms to identify and authenticate individuals based on their unique facial features. Integrating this technology with an IoT-enabled smart locking system enables access control and real-time authentication. In this paper, we provide a working model of an IoT-based door lock that can be implemented in small-scale houses.
There have been numerous studies that went into the field of facial recognition and biometric authentication techniques. These researches started as early as 1964 when Woodrow Bledsoe, Helen Chan Wolf, and Charles Bisson created their first automated facial recognition. Then came Takeo Kanade who came up with an idea for a face-matching system which could calculate the distance between facial features. These researchers paved the way for the early 2000s machine learning algorithms which could detect faces with even greater accuracy. From this IoT based facial recognition has come a long way but there are still some hurdles left, microcontrollers such as Raspberry Pi and ESP32 facilitate remote access, automation, and cloud-based logging but face challenges like computational complexity, privacy concerns, and environmental factors which affects the accuracy of facial recognition. This paper tries to fix some of these problems by combining different research in this field. III.SYSTEM ARCHITECTURE III.I Components The system module consists of: Camera Module: The OV camera is used to capture the images of individuals trying to access the door. Microcontroller: An ESP microcontroller is used to process the images taken by the camera and uses these images to process facial recognition and control the locking mechanism. Facial Recognition Module: We use deep learning AI-based learning modules like OpenCV and TensorFlow for real-time facial recognition and detection. Electronic Locking Mechanism: System access control is done with the help of a solenoidal lock. IoT Cloud Platform: A cloud- based platform like Firebase is used for the storage and processing of access logs and mobile notifications. Mobile/Web Application: Remote monitoring, user management, and real-time notifications are enabled by this. III.II System Workflow Algorithm
To ensure the security and reliability of the system we have included certain measures: Data Encryption: Biometric data and communication between devices are encrypted using ASE- 265 or RSA encryption. Spoof Detection: Anti-spoofing techniques, such as liveness detection through blink or movement analysis, prevent unauthorized access using images or videos. Access Logs: Every access attempt is recorded in a secure database for additional security monitoring and recording. Power-Backup: There will be a power backup provided to the device in case of emergency power failure. It is also needed as a flashlight is provided inside the device as it is more accurate with sufficient light. Alarm and 100-Text: There will be a separate database of images with certain images that we would have added from police or criminal records of individuals with theft backgrounds. If the camera picks up these individuals an alarm is sounded from the device and an emergency text is sent to the nearby police station. VI.RESULTS AND DISCUSSION The prototype was tested in various environmental conditions to evaluate its performance in terms of accuracy, response time, and security. The system demonstrated high accuracy in facial recognition under well-lit conditions but in low-light conditions, the accuracy was low and can be cited as a limitation. This is solved by the flashlight and infrared assist provided. The IoT integration has enabled real-time alerts and remote access, making this system a necessity in smart homes and other places as a security system. The system and devices provide a better way of home security but there are still potential challenges such as privacy concerns which require further investigation. VII.CONCLUSION AND FUTURE WORK This study presents a smart, IoT-enabled door-locking system that integrates facial recognition for secure access control. Future research will focus on improving recognition accuracy in challenging environments, implementing edge computing for faster processing, and integrating multi-modal authentication methods, such as fingerprint recognition and voice verification. The proposed system eliminates the need for physical keys or passwords, offering a seamless and secure authentication mechanism. The integration of cloud-based IoT platforms ensures remote monitoring, logging, and real-time notifications, enhancing overall security and convenience. REFERENCE Amanullah, M. (2013).Microcontroller Based Reprogrammable Digital Door Lock Security System using Keypad &GSM/CDMA Technology, IOSR Journal of Electrical and Electronics Engineering, 4(6):38-42. Zhao, W., Chellappa, R., Phillips, P.J. and Rosenfeld, A. (2003). Face Recognition: A Literature Survey, Center for Automation Research, University of Maryland College, USA. Gordon, G. G. (1991). Face recognition based on depth maps and surface curvature, Proc. SPIE 1570, Geometric Methods in Computer Vision, (1, September 1991);
https://doi.org/10.1117/12. 8 Schneirdeman, H. A. and Kanade, T. (1998). Probabilistic modelling of local Appearance and spatial reationships for object recognition,Proceedings. 1998 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. Kirby, M., and Sirovich, L. (1990). Application of the Karhunen- Loeve Procedure for the Characterization of Human Faces. IEEE Trans. Pattern Anal. Mach. Intell., 12:103-108. Belhumeur, P.N., Hespanha, J.P., and Kriegman, D.J. (1997). Eigenfaces vs. Fisher faces: Recognition Using Class Specific Linear Projection. IEEE Trans. Pattern Anal. Mach. Intell., 19:711-720. Etemad, K., and Chellappa, R. (1997). Discriminant Analysis for Recognition of Human Face Images (Invited Paper). AVBPA. GU, L., Li, S. Z., andZhang, H. J. (2001). Learning probabilistic distribution model for multiview face dectection, Proceedings of the 2001 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. CVPR 2001 Wiskott, L. Fellous, J.L. Krüger, N. and Malsburg, C., (1997). IEEE Transactions on Pattern Analysis and Intelligence, 19(7):775- Cox, I.J., Ghosn, J., and Yianilos, P.N., (1996). Feature-based facerecognition using mixture-distance. Proceedings CVPR IEEE Computer Society Conference on Computer Vision and Pattern Recognition, 209-216. Roy, S., Uddin, M.N., Haque, M.Z. and Kabir, M.J.(2018). Design and Implementation of the Smart Door Lock System with Face Recognition Method using the Linux Platform Raspberry Pi, International Journal of Computer Science and Network, 7(6): 382-388.