IOT-Based Farmland Intrusion Detection System

E. Ibam, O. Boyinbode, Helen Aladesiun
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Abstract

As crop vandalization with conflicts between farmers and herdsmen become recurrent in Nigeria, existing farm intrusion prevention methods such as fence mounting and placement of farm guards can no longer guarantee farm security. This is because intruders either jump over the fence or attack guards on duty without visual evidence. Therefore, a complementary approach using computer technologies for effective detection is required. This paper presents an IoT-based farm intrusion detection model using RFID and image recognition technology. RFID sensor as well as cameras are placed at entrances of a fenced farmland for simultaneous identification. The sensor reads workers’ tags for identification, while cameras capture images of users for further identification as captured images are sent to Convolutional Neutral Network (CNN) for recognition. A user whose image cannot be recognized is flagged as an intruder and an intrusion alert with visual evidence is sent to the farm owner. The system showed a high level of effectiveness with an accuracy of 90%, Precision of 70%, and 80% Recall rate and effectively controlled the rate of illegal encroachment into farmland. 
基于物联网的农田入侵检测系统
在尼日利亚,由于农牧民之间的冲突和破坏作物的行为经常发生,现有的农场入侵预防方法,如安装围栏和安置农场警卫,已不能保证农场安全。这是因为入侵者要么跳过栅栏,要么在没有视觉证据的情况下攻击值班警卫。因此,需要一种利用计算机技术进行有效检测的补充方法。本文提出了一种基于物联网的农场入侵检测模型,该模型采用RFID和图像识别技术。RFID传感器和摄像头被放置在围栏农田的入口处,同时进行识别。传感器读取工作人员的标签以识别身份,而摄像头捕捉用户的图像以进一步识别,然后将捕获的图像发送到卷积神经网络(CNN)进行识别。图像无法识别的用户被标记为入侵者,并将带有视觉证据的入侵警报发送给农场所有者。系统显示出较高的效率,准确率达到90%,精密度达到70%,查全率达到80%,有效控制了非法侵占耕地的比例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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