SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification

In order to address the challenges related to the classification and recognition of soybean disease and healthy leaf identification, it is essential to have access to high-quality images. A meticulously curated dataset named “SoyNet” has been created to provide a clean and comprehensive dataset for...

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Main Authors: Arpan Singh Rajput, Shailja Shukla, S.S. Thakur
Format: Article
Language:English
Published: Elsevier 2023-08-01
Series:Data in Brief
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352340923005474
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author Arpan Singh Rajput
Shailja Shukla
S.S. Thakur
author_facet Arpan Singh Rajput
Shailja Shukla
S.S. Thakur
author_sort Arpan Singh Rajput
collection DOAJ
description In order to address the challenges related to the classification and recognition of soybean disease and healthy leaf identification, it is essential to have access to high-quality images. A meticulously curated dataset named “SoyNet” has been created to provide a clean and comprehensive dataset for research purposes. The dataset comprises over 9000 high-quality soybean images, encompassing healthy and diseased leaves. These images have been captured from various angles and directly sourced from soybean agriculture fields; The soybean leaves images are organized into two sub-folders: SoyNet Raw Data and SoyNet Pre-processing Data. Within the SoyNet Raw Data folder are separate folders for healthy and diseased images captured using a digital camera. The SoyNet Pre-processing Data folder comprises resized images of 256*256 pixels and the grayscale versions of disease and healthy images, following a similar organizational structure. We captured the images using the Nikon digital camera and the Motorola mobile phone camera, utilizing different angles, lighting conditions, and backgrounds. They were taken in different lighting conditions and backgrounds at soybean cultivation fields to represent the real-world scenario accurately. The proposed dataset is valuable for testing, training, and validating soybean leaf disease classification.
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spelling doaj.art-117b8226e71144a097a1660d3e7aefab2023-08-13T04:54:21ZengElsevierData in Brief2352-34092023-08-0149109447SoyNet: A high-resolution Indian soybean image dataset for leaf disease classificationArpan Singh Rajput0Shailja Shukla1S.S. Thakur2Department of Electronics and Communication, Jabalpur Engineering College, Jabalpur, M.P., India; Corresponding author.Department of Electrical Engineering, Jabalpur Engineering College, Jabalpur, M.P., IndiaDepartment of Mathematics, Jabalpur Engineering College, Jabalpur, M.P., IndiaIn order to address the challenges related to the classification and recognition of soybean disease and healthy leaf identification, it is essential to have access to high-quality images. A meticulously curated dataset named “SoyNet” has been created to provide a clean and comprehensive dataset for research purposes. The dataset comprises over 9000 high-quality soybean images, encompassing healthy and diseased leaves. These images have been captured from various angles and directly sourced from soybean agriculture fields; The soybean leaves images are organized into two sub-folders: SoyNet Raw Data and SoyNet Pre-processing Data. Within the SoyNet Raw Data folder are separate folders for healthy and diseased images captured using a digital camera. The SoyNet Pre-processing Data folder comprises resized images of 256*256 pixels and the grayscale versions of disease and healthy images, following a similar organizational structure. We captured the images using the Nikon digital camera and the Motorola mobile phone camera, utilizing different angles, lighting conditions, and backgrounds. They were taken in different lighting conditions and backgrounds at soybean cultivation fields to represent the real-world scenario accurately. The proposed dataset is valuable for testing, training, and validating soybean leaf disease classification.http://www.sciencedirect.com/science/article/pii/S2352340923005474SoybeanMachine learningDeep learningDisease classificationArtificial intelligence
spellingShingle Arpan Singh Rajput
Shailja Shukla
S.S. Thakur
SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
Data in Brief
Soybean
Machine learning
Deep learning
Disease classification
Artificial intelligence
title SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
title_full SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
title_fullStr SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
title_full_unstemmed SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
title_short SoyNet: A high-resolution Indian soybean image dataset for leaf disease classification
title_sort soynet a high resolution indian soybean image dataset for leaf disease classification
topic Soybean
Machine learning
Deep learning
Disease classification
Artificial intelligence
url http://www.sciencedirect.com/science/article/pii/S2352340923005474
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