X-ray driven peanut trait estimation: computer vision aided agri-system transformation

DC ElementWertSprache
dc.contributor.authorDomhoefer, Martha
dc.contributor.authorChakraborty, Debarati
dc.contributor.authorHufnagel, Eva
dc.contributor.authorClaussen, Joelle
dc.contributor.authorWoerlein, Norbert
dc.contributor.authorVoorhaar, Marijn
dc.contributor.authorAnbazhagan, Krithika
dc.contributor.authorChoudhary, Sunita
dc.contributor.authorPasupuleti, Janila
dc.contributor.authorBaddam, Rekha
dc.contributor.authorKholova, Jana
dc.contributor.authorGerth, Stefan
dc.date.accessioned2023-02-17T11:35:54Z-
dc.date.available2023-02-17T11:35:54Z-
dc.date.issued2022
dc.identifier.urihttp://osnascholar.ub.uni-osnabrueck.de/handle/unios/65545-
dc.description.abstractBackground In India, raw peanuts are obtained by aggregators from smallholder farms in the form of whole pods and the price is based on a manual estimation of basic peanut pod and kernel characteristics. These methods of raw produce evaluation are slow and can result in procurement irregularities. The procurement delays combined with the lack of storage facilities lead to fungal contaminations and pose a serious threat to food safety in many regions. To address this gap, we investigated whether X-ray technology could be used for the rapid assessment of the key peanut qualities that are important for price estimation. Results We generated 1752 individual peanut pod 2D X-ray projections using a computed tomography (CT) system (CTportable160.90). Out of these projections we predicted the kernel weight and shell weight, which are important indicators of the produce price. Two methods for the feature prediction were tested: (i) X-ray image transformation (XRT) and (ii) a trained convolutional neural network (CNN). The prediction power of these methods was tested against the gravimetric measurements of kernel weight and shell weight in diverse peanut pod varieties(1). Both methods predicted the kernel mass with R-2 > 0.93 (XRT: R-2 = 0.93 and mean error estimate (MAE) = 0.17, CNN: R-2 = 0.95 and MAE = 0.14). While the shell weight was predicted more accurately by CNN (R-2 = 0.91, MAE = 0.09) compared to XRT (R-2 = 0.78; MAE = 0.08). Conclusion Our study demonstrated that the X-ray based system is a relevant technology option for the estimation of key peanut produce indicators (Figure 1). The obtained results justify further research to adapt the existing X-ray system for the rapid, accurate and objective peanut procurement process. Fast and accurate estimates of produce value are a necessary pre-requisite to avoid post-harvest losses due to fungal contamination and, at the same time, allow the fair payment to farmers. Additionally, the same technology could also assist crop improvement programs in selecting and developing peanut cultivars with enhanced economic value in a high-throughput manner by skipping the shelling of the pods completely. This study demonstrated the technical feasibility of the approach and is a first step to realize a technology-driven peanut production system transformation of the future.
dc.description.sponsorshipProjekt DEAL; Internal grant agency of the Faculty of Economics and Management from the Czech University of Life Sciences Prague [2022B0006]; ICRISAT: Accelerated Varietal Improvement and Seed Delivery of Legumes and Cereals in Africa (AVISA), CGIAR's Crop to End Hunger initiative-ICRISAT; Gates Foundation; DFID, UK; GiZ, Germany; ACIAR, Australia; CtEH-ICRISAT; CGIAR Research Program grant for Grain Legumes and Dryland Cereals-ICRISAT (GLDC-ICRISAT); Open Access funding enabled and organized by Projekt DEAL. The results and knowledge included herein have been obtained owing with support from the following grants: Internal grant agency of the Faculty of Economics and Management from the Czech University of Life Sciences Prague, grant, Life Sciences 4.0 Plus ``, no. 2022B0006, and the following grants from ICRISAT: Accelerated Varietal Improvement and Seed Delivery of Legumes and Cereals in Africa (AVISA), CGIAR's Crop to End Hunger initiative-ICRISAT (a multi-funder initiative led by USAID and including the Gates Foundation; DFID, UK; GiZ, Germany; and ACIAR, Australia; CtEH-ICRISAT; 2019-2021); and CGIAR Research Program grant for Grain Legumes and Dryland Cereals-ICRISAT (GLDC-ICRISAT; 2018-2022).
dc.language.isoen
dc.publisherBMC
dc.relation.ispartofPLANT METHODS
dc.subjectBiochemical Research Methods
dc.subjectBiochemistry & Molecular Biology
dc.subjectConvolutional neural network (CNN)
dc.subjectEAT
dc.subjectFOOD
dc.subjectKernel weight
dc.subjectPeanut production
dc.subjectPlant Sciences
dc.subjectPOSTHARVEST MANAGEMENT
dc.subjectShelling percentage
dc.subjectTechnology-driven system transformation
dc.subjectX-ray
dc.titleX-ray driven peanut trait estimation: computer vision aided agri-system transformation
dc.typejournal article
dc.identifier.doi10.1186/s13007-022-00909-8
dc.identifier.isiISI:000806783400001
dc.description.volume18
dc.description.issue1
dc.contributor.orcid0000-0002-1939-9889
dc.contributor.orcid0000-0001-7525-3705
dc.contributor.researcheridC-3918-2019
dc.identifier.eissn1746-4811
dc.publisher.placeCAMPUS, 4 CRINAN ST, LONDON N1 9XW, ENGLAND
dcterms.isPartOf.abbreviationPlant Methods
dcterms.oaStatusGreen Published, gold
local.import.remainsaffiliations : CGIAR; International Crops Research Institute for the Semi-Arid-Tropics (ICRISAT); University Osnabruck; Czech University of Life Sciences Prague
local.import.remainsweb-of-science-index : Science Citation Index Expanded (SCI-EXPANDED)
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