Ejemplares similares: Discrimination of common defects in loquat fruit cv. ‘Algerie’ using hyperspectral imaging and machine learning techniques
- Postharvest fungal diseases of loquat cv. ‘Algerie’ in Spain
- Evolution of sugars and acids during the maturation of two mutations of ‘Algerí’ loquat
- Detection of fungal infestation in citrus fruits using hyperspectral imaging
- Etiología e incidencia de las enfermedades de poscosecha del níspero cv. Algerie en Callosa d’en Sarrià (Alicante)
- Firmness prediction in 'Rojo Brillante' persimmon using hyperspectral imaging technology
- Detection of Invisible Damages in ‘Rojo Brillante’ Persimmon Fruit at Different Stages Using Hyperspectral Imaging and Chemometrics
Autor: Munera, Sandra
- Quantifying the ultraviolet-induced fluorescence intensity in green mould lesions of diverse citrus varieties: Towards automated detection of citrus decay in postharvest
- Study of light penetration depth of a Vis-NIR hyperspectral imaging system for the assessment of fruit quality. A case study in persimmon fruit
- Rapid Prediction of Nutrient Concentration in Citrus Leaves Using Vis-NIR Spectroscopy
- Uso de imagen hiperespectral para la discriminación en postcosecha de variedades similares de níspero
- Determinación de la textura en caqui "Rojo brillante" mediante imagen hyiperspectral Vis-NIR
- Early detection of Penicillium Digitatum using hyperspectral imaging and deep learning
Autor: Gómez-Sanchís, Juan
- Enhancing anthracnose detection in mango at early stages using hyperspectral imaging and machine learning
- Early detection of mechanical damage in mango using NIR hyperspectral images and machine learning
- Recognition and classification of external skin damage in citrus fruits using multispectral data and morphological features
- Automatic sorting of satsuma, (Citrus unshiu) segments using computer vision and morphological features
- Citrus sorting by identification of the most common defects using multispectral computer vision
- Development of a machine for the automatic sorting of pomegranate (Punica granatum) arils based on computer vision