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    Por favor, use este identificador para citar o enlazar este ítem:https://uvadoc.uva.es/handle/10324/66602

    Título
    From harvest to market: Non-destructive bruise detection in kiwifruit using convolutional neural networks and hyperspectral imaging
    Autor
    Ebrahimi, Sajad
    Pourdarbani, Razieh
    Sabzi, Sajad
    Rohban, Mohammad H.
    Arribas Sánchez, Juan IgnacioAutoridad UVA Orcid
    Año del Documento
    2023
    Editorial
    MDPI
    Descripción
    Producción Científica
    Documento Fuente
    Horticulturae, 2023, Vol. 9, Nº. 8, 936
    Zusammenfassung
    Fruit is often bruised during picking, transportation, and packaging, which is an important post-harvest issue especially when dealing with fresh fruit. This paper is aimed at the early, automatic, and non-destructive ternary (three-class) detection and classification of bruises in kiwifruit based on local spatio-spectral near-infrared (NIR) hyperspectral (HSI) imaging. For this purpose, kiwifruit samples were hand-picked under two ripening stages, either one week (7 days) before optimal ripening (unripe) or at the optimal ripening time instant (ripe). A total of 408 kiwi fruit, i.e., 204 kiwifruits for the ripe stage and 204 kiwifruit for the unripe stage, were harvested. For each stage, three classes were considered (68 samples per class). First, 136 HSI images of all undamaged (healthy) fruit samples, under the two different ripening categories (either unripe or ripe) were acquired. Next, bruising was artificially induced on the 272 fruits under the impact of a metal ball to generate the corresponding bruised fruit HSI image samples. Then, the HSI images of all bruised fruit samples were captured either 8 (Bruised-1) or 16 h (Bruised-2) after the damage was produced, generating a grand total of 408 HSI kiwifruit imaging samples. Automatic 3D-convolutional neural network (3D-CNN) and 2D-CNN classifiers based on PreActResNet and GoogLeNet models were used to analyze the HSI input data. The results showed that the detection of bruising conditions in the case of the unripe fruit is a bit easier than that for its ripe counterpart. The correct classification rate (CCR) of 3D-CNN-PreActResNet and 3D-CNN-GoogLeNet for unripe fruit was 98% and 96%, respectively, over the test set. At the same time, the CCRs of 3D-CNN-PreActResNet and 3D-CNN-GoogLeNet for ripe fruit were both 86%, computed over the test set. On the other hand, the CCRs of 2D-CNN-PreActResNet and 2D-CNN-GoogLeNet for unripe fruit were 96 and 95%, while for ripe fruit, the CCRs were 91% and 98%, respectively, computed over the test set, implying that early detection of the bruising area on HSI imaging was consistently more accurate in the unripe fruit case as compared to its ripe counterpart, with an exception made for the 2D-CNN GoogLeNet classifier which showed opposite behavior.
    Materias (normalizadas)
    Fruit - Quality
    Frutas - Conservación
    Frutas - Industria y comercio - Calidad - Control
    Hyperspectral imaging
    Image processing - Digital techniques
    Imágenes, Tratamiento de las
    Kiwifruit
    Kiwi
    Machine learning
    Aprendizaje automático
    Near infrared spectroscopy
    Espectroscopia de infrarrojos
    Fruit - Ripening
    Materias Unesco
    3107 Horticultura
    2209.90 Tratamiento Digital. Imágenes
    1203.06 Sistemas Automatizados de Control de Calidad
    ISSN
    2311-7524
    Revisión por pares
    SI
    DOI
    10.3390/horticulturae9080936
    Patrocinador
    Ministerio de Ciencia, Innovación y Universidades, Agencia Estatal de Investigacion (AEI) y Fondo Europeo de Desarrollo Regional (FEDER) - ( grant PID2021-122210OB-I00)
    Version del Editor
    https://www.mdpi.com/2311-7524/9/8/936
    Idioma
    eng
    URI
    https://uvadoc.uva.es/handle/10324/66602
    Tipo de versión
    info:eu-repo/semantics/publishedVersion
    Derechos
    openAccess
    Aparece en las colecciones
    • DEP71 - Artículos de revista [358]
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    From-Harvest-to-Market.pdf
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