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Nikita Genze

Showing results (1-10 of 7) with videos related to

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Biodata Mining|July 5, 2017
EFS: an ensemble feature selection tool implemented as R-package and web-applicationUrsula Neumann, Nikita Genze, Dominik Heider
Plant Methods|April 18, 2026
Deep learning-based identification of visually similar foliar diseases in field-grown barleySofia Martello, Nikita Genze, Dominik G Grimm
Plant Methods|December 23, 2020
Accurate machine learning-based germination detection, prediction and quality assessment of three grain cropsNikita Genze, Richa Bharti, Michael Grieb, et al.
Plant Methods|August 23, 2023
Improved weed segmentation in UAV imagery of sorghum fields with a combined deblurring segmentation modelNikita Genze, Maximilian Wirth, Christian Schreiner, et al.
Scientific Data|January 23, 2024
Manually annotated and curated Dataset of diverse Weed Species in Maize and Sorghum for Computer VisionNikita Genze, Wouter K Vahl, Jennifer Groth, et al.
Scientific Reports|April 21, 2025
The combined effect of decreased stomatal density and aperture increases water use efficiency in maizeLarissa Barl, Betina Debastiani Benato, Nikita Genze, et al.
Scientific Data|November 30, 2022
HeliantHOME, a public and centralized database of phenotypic sunflower dataNatalia Bercovich, Nikita Genze, Marco Todesco, et al.
Pageof 1

Showing results (1-10 of 7) with videos related to

Sort By:
Pageof 1
Biodata Mining|July 5, 2017
EFS: an ensemble feature selection tool implemented as R-package and web-applicationUrsula Neumann, Nikita Genze, Dominik Heider
Plant Methods|April 18, 2026
Deep learning-based identification of visually similar foliar diseases in field-grown barleySofia Martello, Nikita Genze, Dominik G Grimm
Plant Methods|December 23, 2020
Accurate machine learning-based germination detection, prediction and quality assessment of three grain cropsNikita Genze, Richa Bharti, Michael Grieb, et al.
Plant Methods|August 23, 2023
Improved weed segmentation in UAV imagery of sorghum fields with a combined deblurring segmentation modelNikita Genze, Maximilian Wirth, Christian Schreiner, et al.
Scientific Data|January 23, 2024
Manually annotated and curated Dataset of diverse Weed Species in Maize and Sorghum for Computer VisionNikita Genze, Wouter K Vahl, Jennifer Groth, et al.
Scientific Reports|April 21, 2025
The combined effect of decreased stomatal density and aperture increases water use efficiency in maizeLarissa Barl, Betina Debastiani Benato, Nikita Genze, et al.
Scientific Data|November 30, 2022
HeliantHOME, a public and centralized database of phenotypic sunflower dataNatalia Bercovich, Nikita Genze, Marco Todesco, et al.
Pageof 1