High-resolution grape cluster images and color-based segmentations for population GE1025 in 2017 and 2018
2019-04-18
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2017-09-21
2018-08-30
2018-08-30
Date completed
2018-08-30
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Title
High-resolution grape cluster images and color-based segmentations for population GE1025 in 2017 and 2018
Published Date
2019-04-18
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Underhill, Anna N
underhillanna@gmail.com
underhillanna@gmail.com
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Experimental Data
Field Study Data
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Abstract
This is a collection of images collected in 2017 and 2018 from the UMN grape research population GE1025 (parentage described in Teh et al., 2017) that was used for two image analysis-based phenotyping experiments: one involving cluster compactness, and one involving skin color. Contained in each year are RAW images, color-corrected images, and segmented images for berry, stem, and background. Details about methods used to capture and segment images are available at https://github.com/underhillanna/GrapeImageAnalysis, or in Underhill, 2019.
Description
Two years (2017, 2018) of images are included. RAW (.NEFF) files were those originally captured; .TIFF files are those which were color-corrected and used for segmentation; .PNG files are output segmented images. More information on the image capture process can be found at https://github.com/underhillanna/GrapeImageAnalysis.
Referenced by
Underhill, Anna N. (2019). Using high-throughput phenotyping to investigate the genetic bases of quantitative traits in hybrid wine grape (Vitis spp.). (master's thesis). University of Minnesota, St. Paul, MN.
https://hdl.handle.net/11299/215040
Teh, S. L., Fresnedo-Ramírez, J., Clark, M. D., Gadoury, D. M., Sun, Q., Cadle-Davidson, L., & Luby, J. J. (2016). Genetic dissection of powdery mildew resistance in interspecific half-sib grapevine families using SNP-based maps. Molecular breeding : new strategies in plant improvement, 37(1), 1. doi:10.1007/s11032-016-0586-4
https://doi.org/10.1007/s11032-016-0586-4
https://hdl.handle.net/11299/215040
Teh, S. L., Fresnedo-Ramírez, J., Clark, M. D., Gadoury, D. M., Sun, Q., Cadle-Davidson, L., & Luby, J. J. (2016). Genetic dissection of powdery mildew resistance in interspecific half-sib grapevine families using SNP-based maps. Molecular breeding : new strategies in plant improvement, 37(1), 1. doi:10.1007/s11032-016-0586-4
https://doi.org/10.1007/s11032-016-0586-4
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Funding information
Specialty Crop Research Initiative Competitive Grant, Award No. 2017- 51181-26829
Minnesota Agricultural Experiment Station
Minnesota Agricultural Experiment Station
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Suggested citation
Underhill, Anna N. (2019). High-resolution grape cluster images and color-based segmentations for population GE1025 in 2017 and 2018. Retrieved from the Data Repository for the University of Minnesota (DRUM), https://hdl.handle.net/11299/202560.
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Size
GE1025 2017 Segmented Images.zip
2017 Segmented Images
(8.2 MB)
GE1025 2018 Segmented Images.zip
2018 Segmented Images
(8.85 MB)
GE1025 2017 RAW Images.zip
2017 RAW Images
(35.16 GB)
GE1025 2018 RAW Images.zip
2018 RAW Images
(37.03 GB)
GE1025 2017 Color Corrected Images.zip
2017 Color Corrected Images
(786.09 MB)
GE1025 2018 Color Corrected Images.zip
2018 Color Corrected Images
(2.81 GB)
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