6533b82cfe1ef96bd128ec15

RESEARCH PRODUCT

Hyperspectral LCTF-based system for classification of decay in mandarins caused by Penicillium digitatum and Penicillium italicum using the most relevant bands and non-linear classifiers

Emilio Soria-olivasD. LorenteJosé M. Martínez-martínezMarcelino Martínez-soberJosé BlascoPablo Escandell-monteroJuan Gómez-sanchisNuria Aleixos

subject

Hyperspectral imagingEXPRESION GRAFICA EN LA INGENIERIAEarly detectionFeature selectionHorticultureMachine visionPenicillium italicumImage analysisBotanymedicineUltraviolet lightFruit inspectionPenicillium digitatumbiologybusiness.industryBlue moldHyperspectral imagingPattern recognitionDecaybiology.organism_classificationmedicine.drug_formulation_ingredientMandarinsFeature selectionArtificial intelligenceNon-linear classifiersbusinessAgronomy and Crop ScienceFood Science

description

[EN] Green mold (Penicillium digitatum) and blue mold (Penicillium italicum) are important sources of postharvest decay affecting the commercialization of mandarins. These fungi infections produce enormous economic losses in mandarin production if early detection is not carried out. Nowadays, this detection is performed manually in dark chambers, where the fruit is illuminated by ultraviolet light to produce fluorescence, which is potentially dangerous for humans. This paper documents a new methodology based on hyperspectral imaging and advanced machine-learning techniques (artificial neural networks and classification and regression trees) for the segmentation and classification of images of citrus free of damage and affected by green mold and blue mold. Feature selection methods are used in order to reduce the dimensionality of the hyperspectral images and determine the 10 most relevant. Neural Networks were used to segment the hyperspectral images. Result's achieved using classifiers based on decision trees show an accuracy of around 93% in the problem of decay classification.

10.1016/j.postharvbio.2013.02.011https://hdl.handle.net/10251/150434