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.
View/Download file
File View/Open | Description | 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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