Legume Research
Web of Science
  • Year: 2024
  • Volume: 47
  • Issue: 7

Remote sensing and AI-based monitoring of legume crop health and growth

  • Author:
  • In Seop Na1, Sungkeun Lee2,*, Atif M. Alamri3, Salman A. AlQahtani4
  • Total Page Count: 6
  • Page Number: 1179 to 1184

1Division of Culture Contents, Graduate School of Data Science, AI Convergence and Open Sharing System, Chonnam National University, Republic of Korea

2Department of AI Engineering, SunChon National University, 255, Jungang-ro, Suncheon-si, Jeollanam-do, South Korea

3Department of Software Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia

4Department of Computer Engineering, College of Computer and Information Sciences, King Saud University, Riyadh, Saudi Arabia

*Corresponding Author: Sungkeun Lee, Department of AI Engineering, SunChon National University, 255, Jungang-ro, Suncheon-si, Jeollanam-do, South Korea, Email: sklee@scnu.ac.kr

Online published on 22 November, 2024.

Abstract

For the enhancement of agricultural productivity, while ensuring sustainability, this study delves into the under-explored domain of monitoring legume crop health and growth. Traditional methods of crop assessment encounter limitations, prompting a push for innovation by integrating advanced remote sensing technologies and artificial intelligence (AI). The purpose is to revolutionize crop assessment techniques and overcome existing constraints.

The data was collected using a combination of satellite imagery and ground-based sensors, resulting in a rich repository of multispectral and spatial information. By using the capabilities of AI, a robust model was developed to interpret the gathered data, offering a detailed insight into the health and growth dynamics of legume crops. The AI algorithms not only identify anomalies but also forecast future states, facilitating timely interventions and informed decision-making in agriculture.

The findings of this study signify a significant change in precision agriculture, where the synergy of remote sensing and AI optimizes resource allocation, minimizes environmental impact and maximizes crop yields. The research unlocks the potential to transform legume farming practices, promoting sustainability and ushering in an era of data-driven cultivation. The implications extend beyond the legume crop sector, influencing the broader agricultural landscape with the promise of more efficient and sustainable practices.

Keywords

Agricultural, Artificial intelligence, Health and Growth, Legume crop health, Remote sensing