Classification of the maturity stage of coffee cherries using comparative feature and machine learning

dc.contributor.authorSebastián Velásquez
dc.contributor.authorArlet Patrícia Franco
dc.contributor.authorNéstor Peña
dc.contributor.authorJuan Carlos Bohórquez
dc.contributor.authorNelson Gutiérrez-Guzmán
dc.coverage.spatialBolivia
dc.date.accessioned2026-03-22T14:18:59Z
dc.date.available2026-03-22T14:18:59Z
dc.date.issued2021
dc.descriptionCitaciones: 15
dc.description.abstractThis work presents the use of multiple techniques (i.e., physicochemical and spectral) applied to harvested coffee cherries for the postharvest classification of the maturity stage. The moisture content (MC), total soluble solids (TSS), bulk density, fruits’ hardness, CIEL*a*b parameters and the dielectric spectroscopy methods were applied on coffee cherries at seven maturity stages. These maturity stages were assessed according to the days after flowering (DAF) and the physical appearance as traditionally performed by growers. An increase of the green-to-red ratio (i.e., a*) parameter was perceived, accompanied by a monotonic response for the hardness, TSS and bulk density with a maximum moisture content at stage 5. In the case of the dielectric spectroscopy technique, the loss parameter presented higher losses for unripe stages at the ionic conduction region. To compare the individual performance of each of the techniques, three machine learning methods were used: random forest (RF), support vector machine (SVM) and k-nearest neighbours (k-NN). The meta-parameters for these techniques were optimized for each case to achieve the best performance possible. Furthermore, as the dielectric response is of spectral nature, recursive feature selection was applied and the 500MHz to 1.3 GHz frequency range selected for the task. The highest performance was obtained for the colorimetric (75.1%) and hardness (72.5%) responses, while the lowest was obtained for the moisture content (45.5%). The dielectric spectroscopy response presented a promising response (56.8%), that achieved a clear separation of unripe from ripe stages, except for stage 5 in which some of the samples were classified as stage 2. Most techniques studied are compatible with field conditions, and the dielectric technique shows potential to be transferred based on availablesoftware-radio defined platforms. Key words: Dielectric spectroscopy; Coffee maturity; Postharvest classification; Physicochemical analysis.
dc.identifier.doi10.25186/.v16i.1710
dc.identifier.urihttps://doi.org/10.25186/.v16i.1710
dc.identifier.urihttps://andeanlibrary.org/handle/123456789/45800
dc.language.isoen
dc.publisherFederal University of Lavras
dc.relation.ispartofCoffee Science
dc.sourceUniversidad de Los Andes
dc.subjectPostharvest
dc.subjectWater content
dc.subjectBulk density
dc.subjectDielectric
dc.subjectMaturity (psychological)
dc.subjectMathematics
dc.subjectMoisture
dc.subjectSupport vector machine
dc.subjectMaterials science
dc.subjectSpectroscopy
dc.titleClassification of the maturity stage of coffee cherries using comparative feature and machine learning
dc.typearticle

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