Publication:

In-Field Mapping of Grape Yield and Quality With Illumination-Invariant Deep Learning

 
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cris.virtual.orcid0000-0003-3792-5026
cris.virtual.orcid0000-0002-9569-9373
cris.virtual.orcid0009-0003-0149-6722
cris.virtual.orcid0000-0003-3070-9814
cris.virtualsource.department7db3840f-300f-4cd3-9f87-715eac1a46ae
cris.virtualsource.department1a726932-beb2-4302-94c5-a7ab5d05ce6c
cris.virtualsource.department8dd6e418-3a7d-4802-bf42-6cb7da487991
cris.virtualsource.department6901d995-9b05-496c-9bb0-2975fa5a0598
cris.virtualsource.orcid7db3840f-300f-4cd3-9f87-715eac1a46ae
cris.virtualsource.orcid1a726932-beb2-4302-94c5-a7ab5d05ce6c
cris.virtualsource.orcid8dd6e418-3a7d-4802-bf42-6cb7da487991
cris.virtualsource.orcid6901d995-9b05-496c-9bb0-2975fa5a0598
dc.contributor.authorCornelissen, Ciem
dc.contributor.authorDe Coninck, Sander
dc.contributor.authorWillekens, Axel
dc.contributor.authorLeroux, Sam
dc.contributor.authorSimoens, Pieter
dc.contributor.orcidext0009-0003-0149-6722
dc.contributor.orcidext0000-0003-3070-9814
dc.contributor.orcidext0000-0002-3893-5632
dc.date.accessioned2026-04-13T12:09:26Z
dc.date.available2026-04-13T12:09:26Z
dc.date.createdwos2025-12-02
dc.date.issued2025
dc.description.abstractThis article presents an end-to-end, IoT-enabled robotic system for the nondestructive, real-time, and spatially resolved mapping of grape yield and quality (brix and acidity) in vineyards. The system features a comprehensive analytical pipeline that integrates two key modules: a high-performance model for grape bunch detection and weight estimation, and a novel deep learning framework for quality assessment from hyperspectral imaging (HSI) data. A critical barrier to in-field HSI is the “domain shift” caused by variable illumination. To overcome this, our quality assessment is powered by the light-invariant spectral autoencoder (LISA), a domain-adversarial framework that learns illumination-invariant features from uncalibrated data. We validated the system’s robustness on a purpose-built HSI dataset spanning three distinct illumination domains: controlled artificial lighting (lab), and variable natural sunlight captured in the morning and afternoon. Results show the complete pipeline achieves a recall (0.82) for bunch detection and an R2 (0.76) for weight prediction, while the LISA module improves quality prediction generalization by over 20% compared with the baselines. By combining these robust modules, the system successfully generates high-resolution, georeferenced data of both grape yield and quality, providing actionable, data-driven insights for precision viticulture (PV).
dc.description.wosFundingTextThis work was supported by the Flanders AI Research Program (FAIR). The work of Sander De Coninck was supported by the Special Research Fund of Ghent University under Grant BOF22/DOC/093.
dc.identifier.doi10.1109/jiot.2025.3617805
dc.identifier.issn2327-4662
dc.identifier.urihttps://imec-publications.be/handle/20.500.12860/59063
dc.language.isoeng
dc.provenance.editstepusergreet.vanhoof@imec.be
dc.publisherIEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
dc.source.beginpage49207
dc.source.endpage49220
dc.source.issue23
dc.source.journalIEEE INTERNET OF THINGS JOURNAL
dc.source.numberofpages14
dc.source.volume12
dc.title

In-Field Mapping of Grape Yield and Quality With Illumination-Invariant Deep Learning

dc.typeJournal article
dspace.entity.typePublication
dspace.file.typePDF
imec.internal.crawledAt2025-10-22
imec.internal.sourcecrawler
imec.internal.wosCreatedAt2026-04-07
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