A Machine Intelligent Framework for Detection of Rice Leaf Diseases in Field Using IoT Based Unmanned Aerial Vehicle System

Authors

  • Sourav Kumar Bhoi Post-Doctoral Research Fellow, Institute of Computer Science and Information Science, Srinivas University, Mangaluru-575001, Karnataka, India. Author
  • Krishna Prasad K Associate Professor, Institute of Computer Science and Information Science, Srinivas University, Pandeshwar, Mangaluru-575001, Karnataka,India Author
  • Rajermani Thinakaran Senior Lecturer, Faculty of Data Science and Information Technology (FDSIT), INTI International University, Nilai, Negeri Sembilan, Malaysia Author

DOI:

https://doi.org/10.55011/STAIQC.2021.2105

Keywords:

Rice, Disease Detection, IoT, UAV, Machine Learning, Stacking Classifier

Abstract

Rice is an important food in our day-to-day life. It has rich sources of carbohydrates that are highly essential for body growth and development. Rice is an important crop in agriculture, where it enhances a country’s economy. However, if rice plants are diseased and not monitored regularly then the crop in the field is wasted and it reduces the proper production rate. Therefore, there should be a mechanism which regularly monitors the crop in a field to detect any disease to rice plant. In this paper, a framework is proposed for identification of rice leaf disease using IoT based Unmanned Aerial Vehicle (UAV) system. Here, the UAV monitors an entire field, capture the images and sends the images to the machine intelligent cloud for detection of rice leaf diseases. The cloud is installed with a proposed stacking classifier that classify the diseased rice plant images received from UAV into different categories. The dataset of these rice leaf diseases is collected from Kaggle source. The performance of the stacking classifier installed at the cloud is evaluated using Python based Orange 3.26 tool. It is observed form the results that stacking classifier outperforms the conventional machine learning models in detecting the actual disease with a classification accuracy (CA) of 86.7%.

Downloads

Published

2022-06-12

Similar Articles

1-10 of 17

You may also start an advanced similarity search for this article.