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Toward robust and high-throughput detection of seed defects in X-ray images via deep learning.
Hamdy, Sherif; Charrier, Aurélie; Corre, Laurence Le; Rasti, Pejman; Rousseau, David.
Afiliação
  • Hamdy S; GEVES, Station Nationale d'Essais de Semences, 25 Georges Morel, 49070, Beaucouze, France.
  • Charrier A; GEVES, Station Nationale d'Essais de Semences, 25 Georges Morel, 49070, Beaucouze, France.
  • Corre LL; GEVES, Station Nationale d'Essais de Semences, 25 Georges Morel, 49070, Beaucouze, France.
  • Rasti P; Laboratoire Angevin de Recherche en Ingénierie des Systèmes (LARIS), UMR INRAe IRHS, Université d'Angers, 62 Avenue Notre Dame du Lac, 49100, Angers, France.
  • Rousseau D; Centre d'Études et de Recherche pour l'Aide à la Décision (CERADE), École d'ingénieurs (ESAIP), 49100, Angers, France.
Plant Methods ; 20(1): 63, 2024 May 06.
Article em En | MEDLINE | ID: mdl-38711143
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 in this article.

RESULTS:

2D X-ray images of both defective and defect-free seeds were acquired. A deep learning model based on state-of-the-art object detection neural networks is proposed. Specific data augmentation techniques are introduced to compensate for the low ratio of defects and increase the robustness to variation of the physical parameters of the X-ray imaging systems. The seed defects were accurately detected (F1-score >90%), surpassing human performance in computation time and error rates. The robustness of these models against the principal distortions commonly found in actual agro-industrial conditions is demonstrated, in particular, the robustness to physical noise, dimensionality reduction and the presence of seed coating.

CONCLUSION:

This work provides a full pipeline to automatically detect common defects in seeds via 2D X-ray imaging. The method is illustrated on sugar beet and faba bean and could be efficiently extended to other species via the proposed generic X-ray data processing approach (X-Robustifier). Beyond a simple proof of feasibility, this constitutes important results toward the effective use in the routine of deep learning-based automatic detection of seed defects.
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Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Plant Methods Ano de publicação: 2024 Tipo de documento: Article País de afiliação: França

Texto completo: 1 Coleções: 01-internacional Base de dados: MEDLINE Idioma: En Revista: Plant Methods Ano de publicação: 2024 Tipo de documento: Article País de afiliação: França