RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications

This dataset represents an extended version of a previous work, accessible at this link: https://doi.org/10.7910/DVN/U0KL6Y. An additional 139 images and a total of 24,983 new annotations have been included. Combined with the original dataset, a total of 394 images with 47,323 annotations are now a...

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Autores principales: Arrechea-Castillo, Darwin Alexis, Espitia Buitrago, Paula Andrea, Florian Vargas, David Alberto, Estupinan Arboleda, Ronald David, Velazquez Hernandez, Riquelmer, Camelo Munevar, Rodrigo Andres, Cardoso Arango, Juan Andres
Formato: Conjunto de datos
Lenguaje:Inglés
Publicado: 2024
Materias:
Acceso en línea:https://hdl.handle.net/10568/159888
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author Arrechea-Castillo, Darwin Alexis
Espitia Buitrago, Paula Andrea
Florian Vargas, David Alberto
Estupinan Arboleda, Ronald David
Velazquez Hernandez, Riquelmer
Camelo Munevar, Rodrigo Andres
Cardoso Arango, Juan Andres
author_browse Arrechea-Castillo, Darwin Alexis
Camelo Munevar, Rodrigo Andres
Cardoso Arango, Juan Andres
Espitia Buitrago, Paula Andrea
Estupinan Arboleda, Ronald David
Florian Vargas, David Alberto
Velazquez Hernandez, Riquelmer
author_facet Arrechea-Castillo, Darwin Alexis
Espitia Buitrago, Paula Andrea
Florian Vargas, David Alberto
Estupinan Arboleda, Ronald David
Velazquez Hernandez, Riquelmer
Camelo Munevar, Rodrigo Andres
Cardoso Arango, Juan Andres
author_sort Arrechea-Castillo, Darwin Alexis
collection Repository of Agricultural Research Outputs (CGSpace)
description This dataset represents an extended version of a previous work, accessible at this link: https://doi.org/10.7910/DVN/U0KL6Y. An additional 139 images and a total of 24,983 new annotations have been included. Combined with the original dataset, a total of 394 images with 47,323 annotations are now available. This new dataset differs from the previous one in several key ways, primarily in the conditions and types of images captured, as well as in the expanded annotations. In the initial release, lighting conditions were carefully controlled to standardize histogram distribution across all images. The images were also captured at a fixed distance and exclusively in a nadir (top-down) view, using a single sensor in a single geographic location. For this updated dataset, variability was prioritized across all aspects. Images were taken in multiple geographic locations, including Palmira, Colombia, and Ocozocoautla de Espinosa, Mexico. Different sensors were used, including a professional Nikon D5600 camera, smartphones (such as the Realme C53 and Oppo Reno 11), and even a Phantom 4 Pro V2 drone. The capture distance varied from 1 to 3 meters, resulting in images with differing spatial resolutions. Additionally, several capture angles were employed: no longer just nadir views but also oblique and frontal angles. Raceme density per plant was also increased. In the original dataset, the plant with the highest raceme count had 851 racemes. In the updated dataset, raceme counts reach as high as 1,586 in a similar area (~1m²), nearly doubling the count. This increase leads to a much higher degree of raceme overlap. This expanded dataset is expected to provide significant benefits for deep learning applications. The enhanced variability supports the development of more robust deep learning models, better suited to handle real-world diversity and complexity.
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institution CGIAR Consortium
language Inglés
publishDate 2024
publishDateRange 2024
publishDateSort 2024
record_format dspace
spelling CGSpace1598882025-01-24T08:54:52Z RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications Arrechea-Castillo, Darwin Alexis Espitia Buitrago, Paula Andrea Florian Vargas, David Alberto Estupinan Arboleda, Ronald David Velazquez Hernandez, Riquelmer Camelo Munevar, Rodrigo Andres Cardoso Arango, Juan Andres tropical agriculture machine learning grasses high-throughput phenotyping imagery digital image processing This dataset represents an extended version of a previous work, accessible at this link: https://doi.org/10.7910/DVN/U0KL6Y. An additional 139 images and a total of 24,983 new annotations have been included. Combined with the original dataset, a total of 394 images with 47,323 annotations are now available. This new dataset differs from the previous one in several key ways, primarily in the conditions and types of images captured, as well as in the expanded annotations. In the initial release, lighting conditions were carefully controlled to standardize histogram distribution across all images. The images were also captured at a fixed distance and exclusively in a nadir (top-down) view, using a single sensor in a single geographic location. For this updated dataset, variability was prioritized across all aspects. Images were taken in multiple geographic locations, including Palmira, Colombia, and Ocozocoautla de Espinosa, Mexico. Different sensors were used, including a professional Nikon D5600 camera, smartphones (such as the Realme C53 and Oppo Reno 11), and even a Phantom 4 Pro V2 drone. The capture distance varied from 1 to 3 meters, resulting in images with differing spatial resolutions. Additionally, several capture angles were employed: no longer just nadir views but also oblique and frontal angles. Raceme density per plant was also increased. In the original dataset, the plant with the highest raceme count had 851 racemes. In the updated dataset, raceme counts reach as high as 1,586 in a similar area (~1m²), nearly doubling the count. This increase leads to a much higher degree of raceme overlap. This expanded dataset is expected to provide significant benefits for deep learning applications. The enhanced variability supports the development of more robust deep learning models, better suited to handle real-world diversity and complexity. 2024 2024-11-18T14:32:59Z 2024-11-18T14:32:59Z Dataset https://hdl.handle.net/10568/159888 en Open Access Arrechea-Castillo, D.A.; Espitia Buitrago, P.A.; Florian Vargas, D.A.; Estupinan Arboleda, R.D.; Velazquez Hernandez, R.; Camelo Munevar, R.A.; Cardoso Arango, J.A. (2024) RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications. https://doi.org/10.7910/dvn/x4lm19
spellingShingle tropical agriculture
machine learning
grasses
high-throughput phenotyping
imagery
digital image processing
Arrechea-Castillo, Darwin Alexis
Espitia Buitrago, Paula Andrea
Florian Vargas, David Alberto
Estupinan Arboleda, Ronald David
Velazquez Hernandez, Riquelmer
Camelo Munevar, Rodrigo Andres
Cardoso Arango, Juan Andres
RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title_full RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title_fullStr RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title_full_unstemmed RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title_short RGB Image Dataset of Urochloa Hybrids for High-Throughput Phenotyping and Artificial Intelligence Applications
title_sort rgb image dataset of urochloa hybrids for high throughput phenotyping and artificial intelligence applications
topic tropical agriculture
machine learning
grasses
high-throughput phenotyping
imagery
digital image processing
url https://hdl.handle.net/10568/159888
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