RootPainter: Deep Learning Segmentation of Biological Images with Corrective Annotation (original) (raw)

Smith, Abraham George; Han, Eusun; Petersen, Jens; Olsen, Niels Alvin Faircloth; Giese, Christian; Athmann, Miriam; Dresbøll, Dorte Bodin and Thorup-Kristensen, Kristian (2020) RootPainter: Deep Learning Segmentation of Biological Images with Corrective Annotation.Bioarxiv, NA, NA-NA. [Completed]

Summary in the original language of the document

We present RootPainter, a GUI-based software tool for the rapid training of deep neural networks for use in biological image analysis. RootPainter facilitates both fully-automatic and semiautomatic image segmentation. We investigate the effectiveness of RootPainter using three plant image datasets, evaluating its potential for root length extraction from chicory roots in soil, biopore counting and root nodule counting from scanned roots. We also use RootPainter to compare dense annotations to corrective ones which are added during the training based on the weaknesses of the current model.

EPrint Type: Journal paper
Subjects: Animal husbandry > Breeding and genetics Soil Farming Systems > Buildings and machinery Farming Systems > Farm nutrient management
Research affiliation: Germany > University of Bonn Denmark > KU - University of Copenhagen
DOI: 10.1101/2020.04.16.044461
Deposited By: Smith, Mr Abraham George
ID Code: 38500
Deposited On: 21 Oct 2020 09:48
Last Modified: 21 Oct 2020 09:48
Document Language: English
Status: Unpublished
Refereed: Not peer-reviewed

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