Skip to main content
SLU publication database (SLUpub)

Research article2024Peer reviewedOpen access

ScabyNet, a user-friendly application for detecting common scab in potato tubers using deep learning and morphological traits

Leiva, Fernanda; Abdelghafour, Florent; Alsheikh, Muath; Nagy, Nina E.; Davik, Jahn; Chawade, Aakash

Abstract

Common scab (CS) is a major bacterial disease causing lesions on potato tubers, degrading their appearance and reducing their market value. To accurately grade scab-infected potato tubers, this study introduces "ScabyNet", an image processing approach combining color-morphology analysis with deep learning techniques. ScabyNet estimates tuber quality traits and accurately detects and quantifies CS severity levels from color images. It is presented as a standalone application with a graphical user interface comprising two main modules. One module identifies and separates tubers on images and estimates quality-related morphological features. In addition, it enables the extraction of tubers as standard tiles for the deep-learning module. The deep-learning module detects and quantifies the scab infection into five severity classes related to the relative infected area. The analysis was performed on a dataset of 7154 images of individual tiles collected from field and glasshouse experiments. Combining the two modules yields essential parameters for quality and disease inspection. The first module simplifies imaging by replacing the region proposal step of instance segmentation networks. Furthermore, the approach is an operational tool for an affordable phenotyping system that selects scab-resistant genotypes while maintaining their market standards.

Published in

Scientific Reports
2024, Volume: 14, number: 1, article number: 1277

      SLU Authors

    • Associated SLU-program

      SLU Plant Protection Network

      UKÄ Subject classification

      Agricultural Science

      Publication identifier

      DOI: https://doi.org/10.1038/s41598-023-51074-4

      Permanent link to this page (URI)

      https://res.slu.se/id/publ/128303