Sunpheno: A Deep Neural Network for Phenological Classification of Sunflower Images

Author:

Luoni Sofia A. Bengoa1ORCID,Ricci Riccardo2,Corzo Melanie A.3,Hoxha Genc4,Melgani Farid2ORCID,Fernandez Paula3ORCID

Affiliation:

1. Laboratory of Genetics, Wageningen University & Research, 6708 PB Wageningen, The Netherlands

2. Department of Information Engineering and Computer Science, University of Trento, 38123 Trento, Italy

3. IABIMO UEDD INTA CONICET, Buenos Aires 1686, Argentina

4. Faculty of Electrical Engineering and Computer Science, Technische Universität Berlin, 10587 Berlin, Germany

Abstract

Leaf senescence is a complex trait which becomes crucial for grain filling because photoassimilates are translocated to the seeds. Therefore, a correct sync between leaf senescence and phenological stages is necessary to obtain increasing yields. In this study, we evaluated the performance of five deep machine-learning methods for the evaluation of the phenological stages of sunflowers using images taken with cell phones in the field. From the analysis, we found that the method based on the pre-trained network resnet50 outperformed the other methods, both in terms of accuracy and velocity. Finally, the model generated, Sunpheno, was used to evaluate the phenological stages of two contrasting lines, B481_6 and R453, during senescence. We observed clear differences in phenological stages, confirming the results obtained in previous studies. A database with 5000 images was generated and was classified by an expert. This is important to end the subjectivity involved in decision making regarding the progression of this trait in the field and could be correlated with performance and senescence parameters that are highly associated with yield increase.

Funder

INTA PE

ANPCyT Préstamo BID PICT

PIP CONICET PIP

Publisher

MDPI AG

Reference44 articles.

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2. Profiles of leaf senescence during reproductive growth of sunflower and maize;Sadras;Ann. Bot.,2000

3. Variaciones del rendimiento en girasol. Identificando las causas;Dosio;Rev. Agromercado Cuad. Girasol,2004

4. Canopy stay-green and yield in non-stressed sunflower;Cantore;Field Crops Res.,2011

5. Nutrients mobilized from leaves of Arabidopsis thaliana during leaf senescence;Himelblau;J. Plant Physiol.,2001

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