Author
Listed:
- Muhammad Usama Tanveer
- Kashif Munir
- Ali Raza
- Mubarak S Almutairi
Abstract
The mango fruit plays a crucial role in providing essential nutrients to the human body and Pakistani mangoes are highly coveted worldwide. The escalating demand for agricultural products necessitates enhanced methods for monitoring and managing agricultural resources. Traditional field surveys are labour-intensive and time-consuming whereas remote sensing offers a comprehensive and efficient alternative. The field of remote sensing has witnessed substantial growth over time with satellite technology proving instrumental in monitoring crops on a large scale throughout their growth stages. In this study, we utilize novel data collected from a mango farm employing Landsat-8 satellite imagery and machine learning to detect mango orchards. We collected a total of 2,150 mango tree samples from a farm over six months in the province of Punjab, Pakistan. Then, we analyzed each sample using seven multispectral bands. The Landsat-8 framework provides high-resolution land surface imagery for detecting mango orchards. This research relies on independent data, offering an advantage for training more advanced machine learning models and yielding reliable findings with high accuracy. Our proposed optimized CART approach outperformed existing methods, achieving a remarkable 99% accuracy score while the k-Fold validation score also reached 99%. This research paves the way for advancements in agricultural remote sensing, offering potential benefits for crop management yield estimation and the broader field of precision agriculture.
Suggested Citation
Muhammad Usama Tanveer & Kashif Munir & Ali Raza & Mubarak S Almutairi, 2024.
"Novel artificial intelligence assisted Landsat-8 imagery analysis for mango orchard detection and area mapping,"
PLOS ONE, Public Library of Science, vol. 19(6), pages 1-20, June.
Handle:
RePEc:plo:pone00:0304450
DOI: 10.1371/journal.pone.0304450
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