Animal Intrusion Detection and Prevention System

International Journal of Computer & Organization Trends  (IJCOT)          
© 2021 by IJCOT Journal
Volume - 11 Issue - 2
Year of Publication : 2021
Authors :  Shivam Kumar Chauhan, Abhishek Sharma, Mrs. Avinash Kaur
DOI : 10.14445/22492593/IJCOT-V11I2P308


MLA Style:Shivam Kumar Chauhan, Abhishek Sharma, Mrs. Avinash Kaur  "Animal Intrusion Detection and Prevention System" International Journal of Computer and Organization Trends 11.2 (2021): 25-28. 

APA Style:Shivam Kumar Chauhan, Abhishek Sharma, Mrs. Avinash Kaur(2021) Animal Intrusion Detection and Prevention SystemInternational Journal of Computer and Organization Trends, 11(2), 25-28.


The main aim of the project is to detect animals trespassing any farm land or areas which are inhibited by human beings. As many Indians are associated with agricultural activities ranging from small gardens to acres of land, the human and animal encounter has always been a bone of contention. This project will be able to mitigate any human and animal encounter in the above specified areas. In this project we have used various sensors to detect the presence of animals near the farms or human habitats which include PIR sensor, IR sensor, and Ultra Sonic sensor. A camera module to see the image of animal. A LCD display to print the message. Arduino Uno a microcontroller which will integrate these modules. A buzzer to create noise. With the help of image processing and ML (Machine Learning) we will be able to identify the respective animal and produce noise of variable frequencies disturbing to that particular animal.


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PIR sensor, IR sensor, Ultra Sonic sensor, LCD display, Arduino Uno, Image Processing, ML (Machine Learning)