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Weeds Detection in Agricultural Fields using Convolutional Neural Network

Hea Choon Ngo, Ummi Rabaah Hashim, Yong Wee Sek, Yogan Jaya Kumar, Wan Sing Ke

Year
2019
Citations
20
Access
Open access

Abstract

Weeds are very annoying for farmers and also not very good for the crops. Its existence might damage the growth of the crops. Therefore, weed control is very important for farmers. Farmers need to ensure their agricultural fields are free from weeds for at least once a week, whether they need to spray weeds herbicides to their plantation or remove it using tools or manually. The aim of this research is to build an automated weed control robot using the Lego Mindstorm EV3 which connected to a computer. The robot consists of motors, servo motors and a camera which we use to capture the image of the crops and weeds. An automated image classification system has been designed to differentiate between weeds and crops. The robot will spray the weed herbicides directly to the area that have been detected weeds near or at it. For the image classification method, we employ the convolutional neural network algorithm to process the image of the object. Therefore, by the use of technology especially in artificial intelligence, farmers can reduce the amount of workload and workforce they need to monitor their plantation. In addition, this technology also can improve the quality of the crops.

Keywords

Convolutional neural networkWeed controlAgricultureAgricultural engineeringWeedRobotComputer scienceArtificial intelligenceProcess (computing)Machine vision

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