Genze,Nikita (1; 2); Vahl, Wouter K. (4); Groth, Jennifer (4); Wirth, Maximilian (1; 2); Grieb, Michael (5); Grimm, Dominik G. (1; 2; 3)
Author affiliation:
1. Technical University of Munich, TUM Campus Straubing for Biotechnology and Sustainability, Bioinformatics, Schulgasse 22, 94315 Straubing, Germany 2. Weihenstephan-Triesdorf University of Applied Sciences, Bioinformatics, Petersgasse 18, 94315 Straubing, Germany 3. Technical University of Munich, TUM School of Computation, Information and Technology (CIT), Boltzmannstr. 3, 85748 Garching, Germany 4. Institute for Crop Science and Plant Breeding, Bavarian State Research Center for Agriculture, Am Gereuth 6, 85354 Freising, Germany 5. Technology and Support Centre in the Centre of Excellence for Renewable Resources (TFZ), Schulgasse 18, 94315 Straubing, Germany
BIO Biowissenschaften; DAT Datenverarbeitung, Informatik; LAN Landbauwissenschaft; NAT Naturwissenschaften (allgemein)
Resource type:
Abbildungen von Objekten / image of objects; Textdokumente / text documents
Data type:
Bilder / images; Tabellen / tables
Other data type:
csv
Description:
To generate a dataset consisting of high quality images that capture the initial growth dynamics of individual plants of several weed species, a greenhouse experiment was performed at the Moving Fields facility of the LfL in Freising, Germany. This experiment took place from 16.06.2021 - 13.12.2021. The plant species were selected as weed species common to fields of sorghum grown in Germany. A Scanalyzer 3D imaging cabin of the Moving Fields facility was used for generating high-quality images. In this cabin, one RGB camera (Basler piA2400-17gm) is mounted 2.8 m perpendicular above the conveyor band. This camera takes images with 2456 x 2058 pixels, which resulted in a ground sampling distance of ∼ 0.1735 mm per pixel.
Each plant in a plot was annotated with bounding boxes using the open souce software CVAT (cvat.ai) throughout the growth, leading to a timeseries of images from sprouting to harvest. The seeds differed in germination rate thus a variable amount of plots were sown per species. This helped mitigating the imbalance issue, but there is still class imbalance in this dataset.
The dataset contains 640 plots of 28 weed species (monocots and dicots), 6 varieties of Sorghum and 2 varieties of Maize. Each plot consists of a timeseries of images resulting in > 82.000 images in total.
«
To generate a dataset consisting of high quality images that capture the initial growth dynamics of individual plants of several weed species, a greenhouse experiment was performed at the Moving Fields facility of the LfL in Freising, Germany. This experiment took place from 16.06.2021 - 13.12.2021. The plant species were selected as weed species common to fields of sorghum grown in Germany. A Scanalyzer 3D imaging cabin of the Moving Fields facility was used for generating high-quality images....
»
Method of data assessment:
The plants were grown in plots that were watered and photographed automatically on at least a daily basis from the day of sowing till harvest, which took place at around shooting. Afterwards plants in a plot was annotated with bounding boxes using the open souce software CVAT (cvat.ai) throughout the growth, leading to a timeseries of images from sprouting to harvest. Not each plant in a plot was annotated, leading to plots that were fully annotated (usable in object detection and tracking) and partly annotated - which can be used for classification and pre-training. Additionally, we provide some images of trays that were not annotated. Finally, we provide instance segmentation masks for a total of >2.000 plant samples of 14 different species.