Security System (Motion Capture) Based on Raspberry Pi

Year : 2024 | Volume :02 | Issue : 01 | Page : 30-35
By

M. Fatima1,

Shakir Usmani,

Shivendra Kumar Pandey,

Priyanka Yadav,

Radhika Sahu,

  1. Professor, Sagar Institute of Research and Technology, Bhopal, Madhya Pradesh, India
  2. Student, Sagar Institute of Research and Technology, Bhopal, Madhya Pradesh, India
  3. Student, Sagar Institute of Research and Technology, Bhopal, Madhya Pradesh, India
  4. Student, Sagar Institute of Research and Technology, Bhopal, Madhya Pradesh, India
  5. Student, Sagar Institute of Research and Technology, Bhopal, Madhya Pradesh, India

Abstract

This paper describes a state-of-the-art security system that uses motion capture technology to offer a reliable and flexible security solution for small-business and home settings. The Raspberry Pi, ESP32 camera module, and PIR (Passive Infrared) sensor are the three main components of the system, and they cooperate to identify and document any unusual behavior. As the system’s central processing unit, the Raspberry Pi is in charge of coordinating all of its operations and making sure everything runs well. Because of its high-resolution video capture capabilities, the ESP32 camera module can record crisp footage of any motion it detects. The PIR sensor, on the other hand, is very good at detecting motion since it is made to detect even the smallest variations in temperature and infrared radiation. The camera records when motion is detected using the PIR sensor. The video is then either sent to a cloud-based storage service or stored locally on the Raspberry Pi for further viewing and analysis. The system is a complete security solution that can be readily integrated into pre-existing home automation systems. It also has features like real-time alarms, remote monitoring capabilities, and connectivity with smart home devices. Compared to conventional security systems, the suggested system has a number of benefits, such as being more affordable, simpler to install, and highly customizable. The system is easily upgraded and modified due to its open-source hardware and software, which makes it a desirable choice for people and organizations searching for a dependable and affordable security solution.

Keywords: Raspberry pi, security system, passive infrared, ES32 module

[This article belongs to International Journal of Solid State Innovations & Research(ijssir)]

How to cite this article: M. Fatima1, Shakir Usmani, Shivendra Kumar Pandey, Priyanka Yadav, Radhika Sahu. Security System (Motion Capture) Based on Raspberry Pi. International Journal of Solid State Innovations & Research. 2024; 02(01):30-35.
How to cite this URL: M. Fatima1, Shakir Usmani, Shivendra Kumar Pandey, Priyanka Yadav, Radhika Sahu. Security System (Motion Capture) Based on Raspberry Pi. International Journal of Solid State Innovations & Research. 2024; 02(01):30-35. Available from: https://journals.stmjournals.com/ijssir/article=2024/view=170364

References

  1. Yugan NithishT,” PIR Motion Capture Security System”, November 2022.
  2. Sayo Akinloye Akinwumi, Arinze Callistus Ezenwosu, Temidayo Omotosho, Olusegun Adewoyin,” Arduino Based Security System using Passive Infrared (PIR) Motion Sensor”, February 2021.
  3. David Moore, “A real-world system for human motion detection and tracking”, California Institute of Technology, June 2003.
  4. Yang Song, Luis Goncalves, Pietro Perona, “Learning Probabilistic Structure for Human Motion Detection”, California Institute of Technology.
  5. Yang Song, Xiaolin Feng, Pietro Perona, “Towards Detection of Human Motion”, California Institute of Technology.
  6. Randal C. Nelson, “Qualitative Detection of Motion by a Moving Observer”, University of Rochester.
  7. Robert Pallbo, “Motion Detection: A Neural Model and its Implementation”, Lund University Cognitive Science.
  8. Lina J. Karam, David Rice, “Image Convolution Concepts and Applications online tutorial”, Arizona State University.
  9. Forsyth, D.A., Ponce, J., “Computer Vision: A Modern Approach”, PearsonEducation, Upper Saddle River, NJ, 2003
  10. Ming Xu, Tim Ellis, “Illumination-Invariant Motion Detection Using Colour Mixture Models”, City University, London.
  11. Jain R., Kasturi R., Schunck G., “Machine Vision”, McGraw Hill, 1995.
  12. Ying-Li Tian, Arun Hampapur, “Robust Salient Motion Detection with Complex Background for Real-time Video Surveillance”, IBM T.J WatsonResearch Centre.
  13. Johansson, “Visual perception of biological motion and a model for itsanalysis.”, Perception and Psychophysics, 14:201-211, 1973.
  14. Birchfield, “Derivation of Kanade-Lucas- Tomasi tracking equation”,1997.
  15. Ying-Li Tian, Arun Hampapur, “Robust Salient Motion Detection with Complex Background for Real-time Video Surveillance”, IBM T.J WatsonResearch Centre.

 


Regular Issue Subscription Original Research
Volume 02
Issue 01
Received May 2, 2024
Accepted June 4, 2024
Published September 4, 2024

Check Our other Platform for Workshops in the field of AI, Biotechnology & Nanotechnology.
Check Out Platform for Webinars in the field of AI, Biotech. & Nanotech.