SURVEILLANCE AND INTRUSION DETECTION SYSTEM FOR CRITICAL INSTALLATION

Authors:

Bala Krishna K,Rachananjali K,Naveen Reddy A,

DOI NO:

https://doi.org/10.26782/jmcms.2019.12.00067

Keywords:

Surveillance,Intrusion Detection System,Wireless,Power Consumption,

Abstract

Multiple sensors are used in this modified surveillance system. The whole system is monitored and controlled wirelessly so there is a huge requirement of power to transmit the data which can be compensated with the use of sensors in a smart way, when the sensor detect the need of surveillance then the camera gets triggered based on the collective decision taken by the user and power is saved accordingly. The sensors are developed to visually capture the image. The project consists of camera (wireless) and stepper motor programmed with Arduino nano (to control the direction of object). Both camera and stepper motor is controlled wirelessly. The camera recording and streaming can be configured by connecting it via Wi-Fi and can be controlled with android application Plug & Play. The stepper motor is programmed by assembly language programming and the program will be dumped through a USB cable with the help of a pc and it can be controlled by interfacing the motor with serial Wi-Fi wireless transceiver module

Refference:

I. A. Mehmood, T. Damarla, and J. Sabatier, “Separation of human and animal
seismic signatures using non-negative matrix factorization,” Pattern
Recognition Letters, vol. 33, no. 16,pp.2085-2093,June
2012.Available:http://www.sciencedirect.com/science/article/pii/S016786551
2002127.
II. Algorithm for non-negative matrix factorization,” in NIPS, vol. 13,
Vancouver, BC, Canada, 2001, pp. 556-562.
III. Babu, T. Vandana, T. Satyanarayana Murthy, and B. Sivaiah. “Detecting
unusual customer consumption profiles in power distribution systems—
APSPDCL.” 2013 IEEE International Conference on Computational
Intelligence and Computing Research. IEEE, 2013.
IV. G.Singh, K. G. Mehrotra, C. K. Mohan, and T. Damarla, “Inferring border
crossing intentions with hidden markov models,” in Proceedings of the 24th
international conference on Industrial engineering and other applications of
applied intelligent systems conference on Modern approaches in applied
intelligence – Volume Part I, ser.IEA/AIE’11. Berlin, Heidelberg: Springer-
Verlag, 2011, pp. 69-78. Available:http://dl.acm.org/citation.cfmid=
2025756.2025767.
V. H. Kameoka, N. Ono, K. Kashino, and S. Sagayama, “Complex nmf: A new
sparse representation for acoustic signals,” in Acoustics Speech and Signal
Processing (ICASSP), 2009 IEEE International Conference on, 2009, pp.
3437-3440.
VI. http://defense-update.com/products/f/falcon-watch.htm.
VII. http://www.selexsas.com/SelexGalileo/EN/Business/Products/AdvancedSens
ors/index.sdo.

VIII. K. M. Houston and D. P. McGaffigan, “Spectrum analysis techniques for
personnel detection using seismic sensors,” in Proc. SPIE, vol. 5090,
Orlando, FL, 2003, pp. 162-173.
IX. M. Zhang, J. Song and Y. Zhang, ‘Three-Tiered Sensor Networks
Architecture for Traffic Information Monitoring and Processing,” Intelligent
Robots and Systems (IROS 2005), 2005.
X. McQ, http://www.mcqinc.com/pdf/iScout Datasheet-12-Jul2011.pdf .
XI. NEETHU, J., et al. “A PROSPECTIVE STUDY ON RESPIRATORY
DISTRESS SYNDROME AMONG NEONATES IN NICU &
ASSESSMENT OF KNOWLEDGE, ATTITUDE & PRACTICE ON
NEONATAL CARE AMONG POSTNATAL MOTHERS–A PILOT
STUDY.” International Journal 5.1 (2017): 1.
XII. O. Gnawali, B. Greenstein, K. Jang, A. Joki, and J. Paek, “The Tenet
Architecture for Tiered Sensor Networks”, Proc. The 4th international
conference on Embedded networked sensor systems, 2006.
XIII. T. Damarla, A. Mehmood, and J. Sabatier, “Detection of people and animals
using nonimaging sensors,” in Proceedings of the 14th International
Conference on Information Fusion (FUSION), July 2011, pp. 1-8.
XIV. Y. Ye, V. Hilaire, A. Koukam, and W. Cai, “A Cluster Based Hybrid
Architecture for Wireless Sensor Networks,” Information Science and
Engineering (ISISE ’08), 2008.

View Download