Survey Paper On Real Time Smart CCTV Surveillance System



EOI: 10.11242/viva-tech.01.06.018

Download Full Text here



Citation

Sonali Salunkhe, Patik Patil, Priyanshu Yadav, Prof.Akshata S. Raut, "Survey Paper On Real Time Smart CCTV Surveillance System", VIVA-IJRI Volume 1, Issue 7, Article COMP_18, pp. 1-5, 2024. Published by Computer Engineering Department, VIVA Institute of Technology, Virar, India.

Abstract

In an era of fast technological innovation, the seamless integration of new technologies into old infrastructure is crucial. This effort attempts to improve data access, optimization, and organization by combining traditional technology with cutting-edge concepts. The startup, which focuses on big data analytics and edge computing, hopes to pave the path for a brighter future. In today’s society, security is critical, especially with the difficulty of abandoned homes owing to demanding duties. To address this worry, CCTV cameras are widely used to protect residences while the owners are away. Furthermore, in smart cities, surveillance cameras play an important role in gathering evidence for crime prevention and investigation. This project presents a new way to surveillance that combines classic video monitoring with superior motion-based sensing technology. Unlike standard systems that just take footage, the suggested system uses sensor cameras to identify and analyze the motion of visible objects. This camera’s reliable monitoring function is meant to spot approaching objects, allowing for a proactive response to potential security concerns. The system’s ability to use motion detection to capture just moving frames is a crucial breakthrough, as it optimizes the use of system resources. By updating the backdrop frame with prior background intensity inference, the system assesses its ability to identify and respond to physical motions appropriately. This research and development work not only contributes to the growth of security systems, but it also demonstrates the successful blending of traditional and cutting-edge technology to handle current difficulties. The suggested motion-based surveillance system is a viable alternative for effective and resourceful security monitoring in both residential and urban settings.

Keywords

Edge Computing, Infrastructure Integration, Motion-Based Surveillance System, OPEN CV, Optimization Organization, Security, Smart Cities, Surveillance, Technological Innovation.

References

  1. Learning OpenCV –Computer Vision with the OpenCV Library O’Reilly Publication.
  2. Ganesh Ananthanarayanan, Paramvir Bahl, Peter Bodik, Krishna Chintalapudl, Matthai Philipose, Lenin Ravindranath, and Sudipta Sinha, Microsoft Research “Real – Time video Analytics : TheKiller App for the Edge computing” , IEEE computer society , 2017.
  3. Zou Z, Shi Z, Guo Y, et al. Object Detection in 20 Years: A Survey[J]. arXiv preprint arXiv:1905.05055, 2019.
  4. T. Kolajo, O. Daramola, and A. Adebiyi, “Big data stream analysis: a systematic literature review,” J. Big Data, 2019.
  5. Singh K, Rajora S, Vishwakarma DK, Tripathi G,Kumar S, Walia GS (2020) Crowd anomaly detection using aggregation of ensembles of fine-tuned ConvNets. Neurocomputing. 371:188–198
  6. Aguzzi C, Gigli L, Sciullo L, Trotta A, Di Felice M (2020) From cloud to edge: seamless software migration at the era of the web of things. IEEE Access 8:228118–228135
  7. Fan Z, Yin J, Song Y, Liu Z (2020) Real-time and accurate abnormal behavior detection in videos. Mach Vis Appl 31(7):1–3
  8. Kutwin, Michal, WojciechPlandowski, and ArturZaroda. "Generalized Word Equations: A New Approach to Data Compression." In 2019 Data Compression Conference (DCC), pp. 585-585. IEEE, 2019.
  9. F. Zantalis, “A Review of Machine Learn-ing and IoT in Smart Transportation” 19 March 2019.
  10. W. Zhong, X. Yin, X. Zhang et al., “Multi-dimensional quality-driven service recommendation with privacy-preservation in mobile edge environment,” Computer Communications, vol. 157, pp. 116–123, 2020.