An IoT-based animal detection system using an interdisciplinary approach

Nowadays, educational institutions particularly colleges, engaged with students and staff, frequently confront various security challenges in their day-to-day activities. One prominent concern involves the threat of animal bites on the campus. In response to this issue, campus management has traditi...

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Main Authors: Mamidi Kiran Kumar, Valiveti Sai Nishwanth, Vutukuri Guru Charan, Dhuda Ashwin Kumar, Alabdeli Haider, Chandrashekar Rakesh, Lakhanpal Sorabh, Praveen
Format: Article
Language:English
Published: EDP Sciences 2024-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/37/e3sconf_icftest2024_01041.pdf
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author Mamidi Kiran Kumar
Valiveti Sai Nishwanth
Vutukuri Guru Charan
Dhuda Ashwin Kumar
Alabdeli Haider
Chandrashekar Rakesh
Lakhanpal Sorabh
Praveen
author_facet Mamidi Kiran Kumar
Valiveti Sai Nishwanth
Vutukuri Guru Charan
Dhuda Ashwin Kumar
Alabdeli Haider
Chandrashekar Rakesh
Lakhanpal Sorabh
Praveen
author_sort Mamidi Kiran Kumar
collection DOAJ
description Nowadays, educational institutions particularly colleges, engaged with students and staff, frequently confront various security challenges in their day-to-day activities. One prominent concern involves the threat of animal bites on the campus. In response to this issue, campus management has traditionally resorted to human patrols and physical barriers to deter animals. To address this multifaceted security challenge, the proposed method “An IoT-based Animal Detection System Using Interdisciplinary Approaches” introduces an innovative solution that leverages the power of IoT technology to enhance campus safety and security significantly. The system deploys a surveillance robot equipped with ultrasonic sensors and ESP32 cameras, employingthe machine learning technique R-CNN for Animal Detection. This proposed method uses an interdisciplinary approach to develop an animal detection system capable of identifying and classifying various species. This proposed method aims to revolutionize campus security by seamlessly integrating advanced technology, mitigating risks proactively, streamlining processes through automation, and presenting a cost-effective alternative to traditional security approaches. Beyond the traditional methods, the proposed system achieves an impressive accuracy rate of animal detection approximately 97.6% enabling real-time alerts through push notifications to security personnel upon detection.
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spelling doaj.art-4132aec1aa474a33a64bde91c415e6802024-04-05T07:29:48ZengEDP SciencesE3S Web of Conferences2267-12422024-01-015070104110.1051/e3sconf/202450701041e3sconf_icftest2024_01041An IoT-based animal detection system using an interdisciplinary approachMamidi Kiran Kumar0Valiveti Sai Nishwanth1Vutukuri Guru Charan2Dhuda Ashwin Kumar3Alabdeli Haider4Chandrashekar Rakesh5Lakhanpal Sorabh6Praveen7Department of AIMLE, GRIETDepartment of AIMLE, GRIETDepartment of AIMLE, GRIETDepartment of AIMLE, GRIETThe Islamic universityDepartment of Mechanical Engineering, New Horizon College of EngineeringLovely Professional UniversityLloyd Institute of Engineering & Technology, Knowledge Park IINowadays, educational institutions particularly colleges, engaged with students and staff, frequently confront various security challenges in their day-to-day activities. One prominent concern involves the threat of animal bites on the campus. In response to this issue, campus management has traditionally resorted to human patrols and physical barriers to deter animals. To address this multifaceted security challenge, the proposed method “An IoT-based Animal Detection System Using Interdisciplinary Approaches” introduces an innovative solution that leverages the power of IoT technology to enhance campus safety and security significantly. The system deploys a surveillance robot equipped with ultrasonic sensors and ESP32 cameras, employingthe machine learning technique R-CNN for Animal Detection. This proposed method uses an interdisciplinary approach to develop an animal detection system capable of identifying and classifying various species. This proposed method aims to revolutionize campus security by seamlessly integrating advanced technology, mitigating risks proactively, streamlining processes through automation, and presenting a cost-effective alternative to traditional security approaches. Beyond the traditional methods, the proposed system achieves an impressive accuracy rate of animal detection approximately 97.6% enabling real-time alerts through push notifications to security personnel upon detection.https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/37/e3sconf_icftest2024_01041.pdf
spellingShingle Mamidi Kiran Kumar
Valiveti Sai Nishwanth
Vutukuri Guru Charan
Dhuda Ashwin Kumar
Alabdeli Haider
Chandrashekar Rakesh
Lakhanpal Sorabh
Praveen
An IoT-based animal detection system using an interdisciplinary approach
E3S Web of Conferences
title An IoT-based animal detection system using an interdisciplinary approach
title_full An IoT-based animal detection system using an interdisciplinary approach
title_fullStr An IoT-based animal detection system using an interdisciplinary approach
title_full_unstemmed An IoT-based animal detection system using an interdisciplinary approach
title_short An IoT-based animal detection system using an interdisciplinary approach
title_sort iot based animal detection system using an interdisciplinary approach
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2024/37/e3sconf_icftest2024_01041.pdf
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