2024
DOI: 10.1186/s13007-024-01195-2
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Toward robust and high-throughput detection of seed defects in X-ray images via deep learning

Sherif Hamdy,
Aurélie Charrier,
Laurence Le Corre
et al.

Abstract: Background The detection of internal defects in seeds via non-destructive imaging techniques is a topic of high interest to optimize the quality of seed lots. In this context, X-ray imaging is especially suited. Recent studies have shown the feasibility of defect detection via deep learning models in 3D tomography images. We demonstrate the possibility of performing such deep learning-based analysis on 2D X-ray radiography for a faster yet robust method via the X-Robustifier pipeline proposed i… Show more

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