An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data

Soybean is an important oilseed crop, rich in protein and oil, often referred to as a ``cash crop'' or ``gold bean'' by Indian farmers. In Maharashtra, soybean cultivation spans over approximately 3.8 million hectares, producing 3.07 million tons, placing the state second in Indi...

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Main Authors: Sayali Shinde, Vahida Attar
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Data in Brief
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Online Access:http://www.sciencedirect.com/science/article/pii/S2352340925002495
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author Sayali Shinde
Vahida Attar
author_facet Sayali Shinde
Vahida Attar
author_sort Sayali Shinde
collection DOAJ
description Soybean is an important oilseed crop, rich in protein and oil, often referred to as a ``cash crop'' or ``gold bean'' by Indian farmers. In Maharashtra, soybean cultivation spans over approximately 3.8 million hectares, producing 3.07 million tons, placing the state second in India for overall soybean production. However, despite of its significance, several issues such as weeds, diseases, and pests hamper the overall productivity of soybean. Addressing these challenges faced by soybean growers it is essential to enhance yield and improve the crop's overall potential Currently, the farming sector is transitioning towards Agriculture 5.0, also known as digital farming. This approach utilizes data-driven technologies, such as artificial intelligence and computer vision, to transform the agriculture sector. These technologies enable the automation of several farming tasks. To develop accurate and robust machine learning/deep learning models high quality datasets are needed.With this aim, we have created a comprehensive dataset of soybean crop images affected by diseases and pest attacks from original fields of Maharashtra region located in India. Data acquisition was conducted across two seasons through aerial as well as ground-based approaches. The dataset is enriched with 4 types of diseases and 1 pest attack. The proposed dataset will serve as a valuable resource for training and testing machine learning and deep learning models ,enabling accurate detection and classification of diseases and pests attack damage.
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spelling doaj-art-66d73b2d6c6345feb0ba5ff9dc1f2fcd2025-08-20T03:10:30ZengElsevierData in Brief2352-34092025-06-016011151710.1016/j.dib.2025.111517An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley DataSayali Shinde0Vahida Attar1Corresponding author.; COEP Technological University Pune, IndiaCOEP Technological University Pune, IndiaSoybean is an important oilseed crop, rich in protein and oil, often referred to as a ``cash crop'' or ``gold bean'' by Indian farmers. In Maharashtra, soybean cultivation spans over approximately 3.8 million hectares, producing 3.07 million tons, placing the state second in India for overall soybean production. However, despite of its significance, several issues such as weeds, diseases, and pests hamper the overall productivity of soybean. Addressing these challenges faced by soybean growers it is essential to enhance yield and improve the crop's overall potential Currently, the farming sector is transitioning towards Agriculture 5.0, also known as digital farming. This approach utilizes data-driven technologies, such as artificial intelligence and computer vision, to transform the agriculture sector. These technologies enable the automation of several farming tasks. To develop accurate and robust machine learning/deep learning models high quality datasets are needed.With this aim, we have created a comprehensive dataset of soybean crop images affected by diseases and pest attacks from original fields of Maharashtra region located in India. Data acquisition was conducted across two seasons through aerial as well as ground-based approaches. The dataset is enriched with 4 types of diseases and 1 pest attack. The proposed dataset will serve as a valuable resource for training and testing machine learning and deep learning models ,enabling accurate detection and classification of diseases and pests attack damage.http://www.sciencedirect.com/science/article/pii/S2352340925002495Digital farmingComputer visionDeep learningDetectionClassificationPrecision Farming
spellingShingle Sayali Shinde
Vahida Attar
An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
Data in Brief
Digital farming
Computer vision
Deep learning
Detection
Classification
Precision Farming
title An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
title_full An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
title_fullStr An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
title_full_unstemmed An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
title_short An Indian UAV and leaf image dataset for integrated crop health assessment of soybean cropMendeley Data
title_sort indian uav and leaf image dataset for integrated crop health assessment of soybean cropmendeley data
topic Digital farming
Computer vision
Deep learning
Detection
Classification
Precision Farming
url http://www.sciencedirect.com/science/article/pii/S2352340925002495
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